BACKGROUND OF THE INVENTION
[0001] Lung cancer is the leading cause of cancer death in the United States and over 220,000
new lung cancer cases are identified each year. Lung cancer is a heterogeneous disease
with subtypes generally determined by histology (small cell, non-small cell, carcinoid,
adenocarcinoma, and squamous cell carcinoma). Differentiation among various morphologic
subtypes of lung cancer is essential in guiding patient management and additional
molecular testing is used to identify specific therapeutic target markers. Variability
in morphology, limited tissue samples, and the need for assessment of a growing list
of therapeutically targeted markers pose challenges to the current diagnostic standard.
Studies of histologic diagnosis reproducibility have shown limited intra- pathologist
agreement and inter-pathologist agreement.
[0004] Thus a need exists for a more reliable means for determining lung cancer subtype.
The present invention addresses this and other needs.
SUMMARY OF THE INVENTION
[0005] The method of assessing whether a patient's lung cancer subtype is adenocarcinoma,
squamous cell carcinoma, or a neuroendocrine (encompassing both small cell carcinoma
and carcinoid). The method comprises probing the levels of each of the classifier
biomarkers of Table 1B at the nucleic acid level, in a lung cancer sample obtained
from the patient. The probing step, in one embodiment, comprises mixing the sample
with oligonucleotides that are substantially complementary to portions of nucleic
acid molecules of each of the classifier biomarkers of Table 1B under conditions suitable
for hybridization of the oligonucleotides to their complements or substantial complements;
detecting whether hybridization occurs between the oligonucleotides to their complements
or substantial complements; and obtaining hybridization values of the classifier biomarkers
based on the detecting step. The hybridization values of the classifier biomarkers
are then compared to reference hybridization value(s) from at least one sample training
set, wherein the at least one sample training set comprises, hybridization values
from a reference adenocarcinoma, squamous cell carcinoma, or a neuroendocrine sample.
The lung cancer sample is classified as an adenocarcinoma, squamous cell carcinoma,
or a neuroendocrine sample based on the results of the comparing step.
BRIEF DESCRIPTION OF THE DRAWINGS
[0006]
Figures 1A-1D illustrate exemplary gene expression heatmaps for adenocarcinoma (Figure 1A), squamous
cell carcinoma (Figure 1B), small cell carcinoma (Figure 1C), and carcinoid (Figure
ID).
Figure 2 is a heatmap of gene expression hierarchical clustering for FFPE RT-PCR gene expression
dataset.
Figure 3 is a comparison of path review and LSP prediction for 77 FFPE samples. Each rectangle
represents a single sample ordered by sample number. Arrows indicate 6 samples that
disagreed with the original diagnosis by both pathology review and gene expression.
DETAILED DESCRIPTION OF THE INVENTION
[0007] As used herein, an "expression profile" comprises one or more values corresponding
to a measurement of the relative abundance, level, presence, or absence of expression
of a discriminative gene. An expression profile can be derived from a subject prior
to or subsequent to a diagnosis of lung cancer, can be derived from a biological sample
collected from a subject at one or more time points prior to or following treatment
or therapy, can be derived from a biological sample collected from a subject at one
or more time points during which there is no treatment or therapy (e.g., to monitor
progression of disease or to assess development of disease in a subject diagnosed
with or at risk for lung cancer), or can be collected from a healthy subject.
[0008] The biomarker panels and methods provided herein are used in various aspects, to
assess, (i) whether a patient's NSCLC subtype is adenocarcinoma or squamous cell carcinoma;
(ii) whether a patient's lung cancer subtype is adenocarcinoma, squamous cell carcinoma,
or a neuroendocrine (encompassing both small cell carcinoma and carcinoid) and/or
(iii) whether a patient's lung cancer subtype is adenocarcinoma, squamous cell carcinoma,
small cell carcinoma or carcinoid.
[0009] For example, the biomarker panel as disclosed in Table 1B is used in various embodiments
to assess and classify a patient's lung cancer subtype.
[0010] In general, the methods provided herein are used to classify a lung cancer sample
as a particular lung cancer subtype. The method comprises probing the levels of each
of the classifier biomarkers of Table 1B at the nucleic acid level, in a lung cancer
sample obtained from the patient. The probing step, in one embodiment, comprises mixing
the sample with oligonucleotides that are substantially complementary to portions
of nucleic acid molecules, e.g., cDNA molecules or mRNA molecules, of the classifier
biomarkers of Table 1B under conditions suitable for hybridization of the oligonucleotides
to their complements or substantial complements; detecting whether hybridization occurs
between the oligonucleotides to their complements or substantial complements; and
obtaining hybridization values of the classifier biomarkers based on the detecting
step. The hybridization values of the classifier biomarkers are then compared to reference
hybridization value(s) from at least one sample training set. For example, the at
least one sample training set comprises hybridization values from a reference adenocarcinoma,
squamous cell carcinoma, a neuroendocrine sample, small cell carcinoma sample. The
lung cancer sample is classified, for example, as an adenocarcinoma, squamous cell
carcinoma, a neuroendocrine or small cell carcinoma based on the results of the comparing
step.
[0011] The lung tissue sample can be any sample isolated from a human subject. For example,
in one embodiment, the analysis is performed on lung biopsies that are embedded in
paraffin wax. This aspect of the invention provides a means to improve current diagnostics
by accurately identifying the major histological types, even from small biopsies.
The methods of the invention, including the RT-PCR methods, are sensitive, precise
and have multianalyte capability for use with paraffin embedded samples. See, for
example,
Cronin et al. (2004) Am. J Pathol. 164(1): 35-42.
[0012] Formalin fixation and tissue embedding in paraffin wax is a universal approach for
tissue processing prior to light microscopic evaluation. A major advantage afforded
by formalin-fixed paraffin-embedded (FFPE) specimens is the preservation of cellular
and architectural morphologic detail in tissue sections. (
Fox et al. (1985) J Histochem Cytochem 33:845-853). The standard buffered formalin fixative in which biopsy specimens are processed
is typically an aqueous solution containing 37% formaldehyde and 10-15% methyl alcohol.
Formaldehyde is a highly reactive dipolar compound that results in the formation of
protein-nucleic acid and protein-protein crosslinks in vitro (
Clark et al. (1986) J Histochem Cytochem 34:1509-1512;
McGhee and von Hippel (1975) Biochemistry 14:1281- 1296).
[0013] In one embodiment, the sample used herein is obtained from an individual, and comprises
fresh-frozen paraffin embedded (FFPE) tissue. However, other tissue and sample types
are amenable for use herein.
[0014] Methods are known in the art for the isolation of RNA from FFPE tissue. In one embodiment,
total RNA can be isolated from FFPE tissues as described by
Bibikova et al. (2004) American Journal of Pathology 165:1799-1807, herein incorporated by reference. Likewise, the High Pure RNA Paraffin Kit (Roche)
can be used. Paraffin is removed by xylene extraction followed by ethanol wash. RNA
can be isolated from sectioned tissue blocks using the MasterPure Purification kit
(Epicenter, Madison, Wis.); a DNase I treatment step is included. RNA can be extracted
from frozen samples using Trizol reagent according to the supplier's instructions
(Invitrogen Life Technologies, Carlsbad, Calif.). Samples with measurable residual
genomic DNA can be resubjected to DNaseI treatment and assayed for DNA contamination.
All purification, DNase treatment, and other steps can be performed according to the
manufacturer's protocol. After total RNA isolation, samples can be stored at -80 °C
until use.
[0015] General methods for mRNA extraction are well known in the art and are disclosed in
standard textbooks of molecular biology, including
Ausubel et al., ed., Current Protocols in Molecular Biology, John Wiley & Sons, New
York 1987-1999. Methods for RNA extraction from paraffin embedded tissues are disclosed, for example,
in Rupp and Locker (Lab Invest. 56:A67, 1987) and
De Andres et al. (Biotechniques 18:42-44, 1995). In particular, RNA isolation can be performed using a purification kit, a buffer
set and protease from commercial manufacturers, such as Qiagen (Valencia, Calif.),
according to the manufacturer's instructions. For example, total RNA from cells in
culture can be isolated using Qiagen RNeasy mini-columns. Other commercially available
RNA isolation kits include MasterPure.TM. Complete DNA and RNA Purification Kit (Epicentre,
Madison, Wis.) and Paraffin Block RNA Isolation Kit (Ambion, Austin, Tex.). Total
RNA from tissue samples can be isolated, for example, using RNA Stat-60 (Tel-Test,
Friendswood, Tex.). RNA prepared from a tumor can be isolated, for example, by cesium
chloride density gradient centrifugation. Additionally, large numbers of tissue samples
can readily be processed using techniques well known to those of skill in the art,
such as, for example, the single-step RNA isolation process of Chomczynski (
U.S. Pat. No. 4,843,155).
[0016] In one embodiment, a sample comprises cells harvested from a lung tissue sample,
for example, an adenocarcinoma sample. Cells can be harvested from a biological sample
using standard techniques known in the art. For example, in one embodiment, cells
are harvested by centrifuging a cell sample and resuspending the pelleted cells. The
cells can be resuspended in a buffered solution such as phosphate-buffered saline
(PBS). After centrifuging the cell suspension to obtain a cell pellet, the cells can
be lysed to extract nucleic acid, e.g, messenger RNA. All samples obtained from a
subject, including those subjected to any sort of further processing, are considered
to be obtained from the subject.
[0017] The sample, in one embodiment, is further processed before the detection of the biomarker
levels of the combination of biomarkers set forth herein. For example, mRNA in a cell
or tissue sample can be separated from other components of the sample. The sample
can be concentrated and/or purified to isolate mRNA in its non-natural state, as the
mRNA is not in its natural environment. For example, studies have indicated that the
higher order structure of mRNA
in vivo differs from the
in vitro structure of the same sequence (
see, e.g., Rouskin et al. (2014). Nature 505, pp. 701-705).
[0018] mRNA from the sample in one embodiment, is hybridized to a synthetic DNA probe, which
in some embodiments, includes a detection moiety (e.g., detectable label, capture
sequence, barcode reporting sequence). Accordingly, in these embodiments, a non-natural
mRNA-cDNA complex is ultimately made and used for detection of the biomarker. In another
embodiment, mRNA from the sample is directly labeled with a detectable label, e.g.,
a fluorophore. In a further embodiment, the non-natural labeled-mRNA molecule is hybridized
to a cDNA probe and the complex is detected.
[0019] In one embodiment, once the mRNA is obtained from a sample, it is converted to complementary
DNA (cDNA) in a hybridization reaction or is used in a hybridization reaction together
with one or more cDNA probes. cDNA does not exist
in vivo and therefore is a non-natural molecule. Furthermore, cDNA-mRNA hybrids are synthetic
and do not exist
in vivo. Besides cDNA not existing
in vivo, cDNA is necessarily different than mRNA, as it includes deoxyribonucleic acid and
not ribonucleic acid. The cDNA is then amplified, for example, by the polymerase chain
reaction (PCR) or other amplification method known to those of ordinary skill in the
art. For example, other amplification methods that may be employed include the ligase
chain reaction (LCR) (
Wu and Wallace, Genomics, 4:560 (1989),
Landegren et al., Science, 241:1077 (1998), transcription amplification (
Kwoh et al., Proc. Natl. Acad. Sci. USA, 86:1173 (1989)), self-sustained sequence replication (
Guatelli et al., Proc. Nat. Acad. Sci. USA, 87:1874 (1990)), and nucleic acid based sequence amplification (NASBA). Guidelines for selecting
primers for PCR amplification are known to those of ordinary skill in the art.
See, e.g., McPherson et al., PCR Basics: From Background to Bench, Springer-Verlag, 2000. The product of this amplification reaction,
i.e., amplified cDNA is also necessarily a non-natural product. First, as mentioned above,
cDNA is a non-natural molecule. Second, in the case of PCR, the amplification process
serves to create hundreds of millions of cDNA copies for every individual cDNA molecule
of starting material. The number of copies generated are far removed from the number
of copies of mRNA that are present
in vivo.
[0020] In one embodiment, cDNA is amplified with primers that introduce an additional DNA
sequence (
e.g., adapter, reporter, capture sequence or moiety, barcode) onto the fragments (
e.g., with the use of adapter-specific primers), or mRNA or cDNA biomarker sequences are
hybridized directly to a cDNA probe comprising the additional sequence (e.g., adapter,
reporter, capture sequence or moiety, barcode). Amplification and/or hybridization
of mRNA to a cDNA probe therefore serves to create non-natural double stranded molecules
from the non-natural single stranded cDNA, or the mRNA, by introducing additional
sequences and forming non-natural hybrids. Further, as known to those of ordinary
skill in the art, amplification procedures have error rates associated with them.
Therefore, amplification introduces further modifications into the cDNA molecules.
In one embodiment, during amplification with the adapter-specific primers, a detectable
label,
e.g., a fluorophore, is added to single strand cDNA molecules. Amplification therefore
also serves to create DNA complexes that do not occur in nature, at least because
(i) cDNA does not exist
in vivo, (i) adapter sequences are added to the ends of cDNA molecules to make DNA sequences
that do not exist
in vivo, (ii) the error rate associated with amplification further creates DNA sequences that
do not exist
in vivo, (iii) the disparate structure of the cDNA molecules as compared to what exists in
nature and (iv) the chemical addition of a detectable label to the cDNA molecules.
[0021] In some embodiments, the expression of a biomarker of interest is detected at the
nucleic acid level via detection of non-natural cDNA molecules.
[0022] The detecting can be performed by any suitable technique including, but not limited
to, RNA-seq, a reverse transcriptase polymerase chain reaction (RT-PCR), a microarray
hybridization assay, or another hybridization assay,
e.g., a NanoString assay for example, with primers and/or probes specific to the classifier
biomarkers, and/or the like. It should be noted that the primers provided in Table
1A, Table 1B, Table 1C, Table 2, Table 3, Table 4, Table 5 and Table 6 are merely
for illustrative purposes and should not be construed as limiting the invention.
[0023] The biomarkers described herein include RNA comprising the entire or partial sequence
of any of the nucleic acid sequences of interest, or their non-natural cDNA product,
obtained synthetically
in vitro in a reverse transcription reaction. The term "fragment" is intended to refer to
a portion of the polynucleotide that generally comprise at least 10, 15, 20, 50, 75,
100, 150, 200, 250, 300, 350, 400, 450, 500, 550, 600, 650, 700, 800, 900, 1,000,
1,200, or 1,500 contiguous nucleotides, or up to the number of nucleotides present
in a full-length biomarker polynucleotide disclosed herein. A fragment of a biomarker
polynucleotide will generally encode at least 15, 25, 30, 50, 100, 150, 200, or 250
contiguous amino acids, or up to the total number of amino acids present in a full-length
biomarker protein of the invention.
[0024] In some embodiments, overexpression, such as of an RNA transcript or its expression
product, is determined by normalization to the level of reference RNA transcripts
or their expression products, which can be all measured transcripts (or their products)
in the sample or a particular reference set of RNA transcripts (or their non-natural
cDNA products). Normalization is performed to correct for or normalize away both differences
in the amount of RNA or cDNA assayed and variability in the quality of the RNA or
cDNA used. Therefore, an assay typically measures and incorporates the expression
of certain normalizing genes, including well known housekeeping genes, such as, for
example, GAPDH and/or β-Actin. Alternatively, normalization can be based on the mean
or median signal of all of the assayed biomarkers or a large subset thereof (global
normalization approach).

[0025] Isolated mRNA can be used in hybridization or amplification assays that include,
but are not limited to, Southern or Northern analyses, PCR analyses and probe arrays,
NanoString Assays. One method for the detection of mRNA levels involves contacting
the isolated mRNA or synthesized cDNA with a nucleic acid molecule (probe) that can
hybridize to the mRNA encoded by the gene being detected. The nucleic acid probe can
be, for example, a cDNA, or a portion thereof, such as an oligonucleotide of at least
7, 15, 30, 50, 100, 250, or 500 nucleotides in length and sufficient to specifically
hybridize under stringent conditions to the non-natural cDNA or mRNA biomarker of
the present invention.
[0026] As explained above, in one embodiment, once the mRNA is obtained from a sample, it
is converted to complementary DNA (cDNA) in a hybridization reaction. cDNA does not
exist
in vivo and therefore is a non-natural molecule. In a further embodiment, the cDNA is then
amplified, for example, by the polymerase chain reaction (PCR) or other amplification
method known to those of ordinary skill in the art. The product of this amplification
reaction,
i.e., amplified cDNA is necessarily a non-natural product. As mentioned above, cDNA is
a non-natural molecule. Second, in the case of PCR, the amplification process serves
to create hundreds of millions of cDNA copies for every individual cDNA molecule of
starting material. The number of copies generated are far removed from the number
of copies of mRNA that are present
in vivo.
[0027] In one embodiment, cDNA is amplified with primers that introduce an additional DNA
sequence (adapter sequence) onto the fragments (with the use of adapter-specific primers).
Amplification therefore serves to create non-natural double stranded molecules from
the non-natural single stranded cDNA, by introducing barcode, adapter and/or reporter
sequences onto the already non-natural cDNA. In one embodiment, during amplification
with the adapter-specific primers, a detectable label,
e.g., a fluorophore, is added to single strand cDNA molecules. Amplification therefore
also serves to create DNA complexes that do not occur in nature, at least because
(i) cDNA does not exist
in vivo, (i) adapter sequences are added to the ends of cDNA molecules to make DNA sequences
that do not exist
in vivo, (ii) the error rate associated with amplification further creates DNA sequences that
do not exist
in vivo, (iii) the disparate structure of the cDNA molecules as compared to what exists in
nature and (iv) the chemical addition of a detectable label to the cDNA molecules.
[0028] In one embodiment, the synthesized cDNA (for example, amplified cDNA) is immobilized
on a solid surface via hybridization with a probe, e.g., via a microarray. In another
embodiment, cDNA products are detected via real-time polymerase chain reaction (PCR)
via the introduction of fluorescent probes that hybridize with the cDNA products.
For example, in one embodiment, biomarker detection is assessed by quantitative fluorogenic
RT-PCR (
e.g., with TaqMan® probes). For PCR analysis, well known methods are available in the art
for the determination of primer sequences for use in the analysis.
[0029] Biomarkers provided herein in one embodiment, are detected via a hybridization reaction
that employs a capture probe and/or a reporter probe. For example, the hybridization
probe is a probe derivatized to a solid surface such as a bead, glass or silicon substrate.
In another embodiment, the capture probe is present in solution and mixed with the
patient's sample, followed by attachment of the hybridization product to a surface,
e.g., via a biotin-avidin interaction (
e.g., where biotin is a part of the capture probe and avidin is on the surface). The hybridization
assay in one embodiment, employs both a capture probe and a reporter probe. The reporter
probe can hybridize to either the capture probe or the biomarker nucleic acid. Reporter
probes e.g., are then counted and detected to determine the level of biomarker(s)
in the sample. The capture and/or reporter probe, in one embodiment contain a detectable
label, and/or a group that allows functionalization to a surface.
[0031] Hybridization assays described in
U.S. Patent Nos. 7,473,767 and
8,492,094are amenable for use with the methods provided herein,
i.e., to detect the biomarkers and biomarker combinations described herein.
[0032] Biomarker levels may be monitored using a membrane blot (such as used in hybridization
analysis such as Northern, Southern, dot, and the like), or microwells, sample tubes,
gels, beads, or fibers (or any solid support comprising bound nucleic acids). See,
for example,
U.S. Pat. Nos. 5,770,722,
5,874,219,
5,744,305,
5,677,195 and
5,445,934.
[0033] In one embodiment, microarrays are used to detect biomarker levels. Microarrays are
particularly well suited for this purpose because of the reproducibility between different
experiments. DNA microarrays provide one method for the simultaneous measurement of
the expression levels of large numbers of genes. Each array consists of a reproducible
pattern of capture probes attached to a solid support. Labeled RNA or DNA is hybridized
to complementary probes on the array and then detected by laser scanning Hybridization
intensities for each probe on the array are determined and converted to a quantitative
value representing relative gene expression levels. See, for example, U.S. Pat. Nos.
6,040,138,
5,800,992 and
6,020,135,
6,033,860, and
6,344,316. High-density oligonucleotide arrays are particularly useful for determining the
biomarker profile for a large number of RNAs in a sample.
[0034] Techniques for the synthesis of these arrays using mechanical synthesis methods are
described in, for example,
U.S. Pat. No. 5,384,261. Although a planar array surface is generally used, the array can be fabricated on
a surface of virtually any shape or even a multiplicity of surfaces. Arrays can be
nucleic acids (or peptides) on beads, gels, polymeric surfaces, fibers (such as fiber
optics), glass, or any other appropriate substrate. See, for example,
U.S. Pat. Nos. 5,770,358,
5,789,162,
5,708,153,
6,040,193 and
5,800,992. Arrays can be packaged in such a manner as to allow for diagnostics or other manipulation
of an all-inclusive device. See, for example,
U.S. Pat. Nos. 5,856,174 and
5,922,591.
[0035] Serial analysis of gene expression (SAGE) in one embodiment is employed in the methods
described herein. SAGE is a method that allows the simultaneous and quantitative analysis
of a large number of gene transcripts, without the need of providing an individual
hybridization probe for each transcript. First, a short sequence tag (about 10-14
bp) is generated that contains sufficient information to uniquely identify a transcript,
provided that the tag is obtained from a unique position within each transcript. Then,
many transcripts are linked together to form long serial molecules, that can be sequenced,
revealing the identity of the multiple tags simultaneously. The expression pattern
of any population of transcripts can be quantitatively evaluated by determining the
abundance of individual tags, and identifying the gene corresponding to each tag.
See, Velculescu et al. Science 270:484-87, 1995;
Cell 88:243-51, 1997.
[0036] An additional method of biomarker level analysis at the nucleic acid level is the
use of a sequencing method, for example, RNAseq, next generation sequencing, and massively
parallel signature sequencing (MPSS), as described by
Brenner et al. (Nat. Biotech. 18:630-34, 2000, incorporated by reference in its entirety). This is a sequencing approach that combines
non-gel-based signature sequencing with in vitro cloning of millions of templates
on separate 5 µm diameter microbeads. First, a microbead library of DNA templates
is constructed by in vitro cloning. This is followed by the assembly of a planar array
of the template-containing microbeads in a flow cell at a high density (typically
greater than 3.0 X 10
6 microbeads/cm
2). The free ends of the cloned templates on each microbead are analyzed simultaneously,
using a fluorescence-based signature sequencing method that does not require DNA fragment
separation. This method has been shown to simultaneously and accurately provide, in
a single operation, hundreds of thousands of gene signature sequences from a yeast
cDNA library.
[0037] Immunohistochemistry methods are also suitable for detecting the levels of the biomarkers
of the present invention. Samples can be frozen for later preparation or immediately
placed in a fixative solution. Tissue samples can be fixed by treatment with a reagent,
such as formalin, gluteraldehyde, methanol, or the like and embedded in paraffin.
Methods for preparing slides for immunohistochemical analysis from formalin-fixed,
paraffin-embedded tissue samples are well known in the art.
[0038] In one embodiment, the levels of the biomarkers of Table 1B are normalized against
the expression levels of all RNA transcripts or their non-natural cDNA expression
products, or protein products in the sample, or of a reference set of RNA transcripts
or a reference set of their non-natural cDNA expression products, or a reference set
of their protein products in the sample.
[0039] As provided throughout, the methods set forth herein provide a method for determining
the lung cancer subtype of a patient. Once the biomarker levels are determined, for
example by measuring non natural cDNA biomarker levels or non-natural mRNA-cDNA biomarker
complexes, the biomarker levels are compared to reference values or a reference sample,
for example with the use of statistical methods or direct comparison of detected levels,
to make a determination of the lung cancer molecular subtype. Based on the comparison,
the patient's lung cancer sample is classified, e.g., as neuroendocrine, squamous
cell carcinoma, adenocarcinoma. In another embodiment, based on the comparison, the
patient's lung cancer sample is classified as squamous cell carcinoma, adenocarcinoma
or small cell carcinoma. In another embodiment, based on the comparison, the patient's
lung cancer sample is classified as squamous cell carcinoma, adenocarcinoma, small
cell carcinoma or carcinoid lung cancer.
[0040] In one embodiment, hybridization values of the classifier biomarkers of Table 1B
are compared to reference hybridization value(s) from at least one sample training
set, wherein the at least one sample training set comprises hybridization values from
a reference sample(s). In a further embodiment, the at least one sample training set
comprises hybridization values of the classifier biomarkers of Table 1B from an adenocarcinoma
sample, a squamous cell carcinoma sample, a neuroendocrine sample, a small cell lung
carcinoma sample, a carcinoid lung cancer sample, or a combination thereof. In another
embodiment, the at least one sample training set comprises hybridization values of
the classifier biomarkers of Table 1B from the reference samples provided in Table
A below.
| Table A. Various sample training set embodiments of the invention |
| At least one sample training set |
Origin of reference sample hybridization values |
Lung cancer subtyping method |
| Embodiment 1 |
Adenocarcinoma reference sample and/or squamous cell carcinoma reference sample |
Assessing whether patient sample is adenocarcinoma or squamous cell carcinoma |
| Embodiment 2 |
Adenocarcinoma reference sample, squamous cell carcinoma reference sample and/or neuroendocrine
reference sample |
Assessing whether patient sample is adenocarcinoma, squamous cell carcinoma or neuroendocrine
sample |
| Embodiment 3 |
Adenocarcinoma reference sample, squamous cell carcinoma reference sample, small cell
carcinoma reference and/or carcinoid reference sample |
Assessing whether patient sample is adenocarcinoma, squamous cell carcinoma, small
cell carcinoma sample or carcinoid |
[0041] Methods for comparing detected levels of biomarkers to reference values and/or reference
samples are provided herein. Based on this comparison, in one embodiment a correlation
between the biomarker levels obtained from the subject's sample and the reference
values is obtained. An assessment of the lung cancer subtype is then made.
[0042] Various statistical methods can be used to aid in the comparison of the biomarker
levels obtained from the patient and reference biomarker levels, for example, from
at least one sample training set.
[0043] In one embodiment, a supervised pattern recognition method is employed. Examples
of supervised pattern recognition methods can include, but are not limited to, the
nearest centroid methods (
Dabney (2005) Bioinformatics 21(22):4148-4154 and
Tibshirani et al. (2002) Proc. Natl. Acad. Sci. USA 99(10):6576-6572); soft independent modeling of class analysis (SIMCA) (see, for example, Wold, 1976);
partial least squares analysis (PLS) (see, for example, Wold, 1966; Joreskog, 1982;
Frank, 1984; Bro, R., 1997); linear descriminant analysis (LDA) (see, for example,
Nillson, 1965); K-nearest neighbour analysis (KNN) (sec, for example, Brown et al.,
1996); artificial neural networks (ANN) (see, for example, Wasserman, 1989; Anker
et al., 1992; Hare, 1994); probabilistic neural networks (PNNs) (see, for example,
Parzen, 1962; Bishop, 1995; Speckt, 1990; Broomhead et al., 1988; Patterson, 1996);
rule induction (RI) (see, for example, Quinlan, 1986); and, Bayesian methods (see,
for example, Bretthorst, 1990a, 1990b, 1988). In one embodiment, the classifier for
identifying tumor subtypes based on gene expression data is the centroid based method
described in
Mullins et al. (2007) Clin Chem. 53(7): 1273-9.
[0044] In other embodiments, an unsupervised training approach is employed, and therefore,
no training set is used.
[0045] Referring to sample training sets for supervised learning approaches again, in some
embodiments, a sample training set(s) can include expression data of all of the classifier
biomarkers (e.g., all the classifier biomarkers of any of Table 1B) from an adenocarcinoma
sample. In some embodiments, a sample training set(s) can include expression data
of all of the classifier biomarkers (e.g., all the classifier biomarkers of any of
Table 1B) from a squamous cell carcinoma sample, an adenocarcinoma sample and/or a
neuroendocrine sample. In some embodiments, the sample training set(s) are normalized
to remove sample-to-sample variation.
[0046] In some embodiments, comparing can include applying a statistical algorithm, such
as, for example, any suitable multivariate statistical analysis model, which can be
parametric or non-parametric. In some embodiments, applying the statistical algorithm
can include determining a correlation between the expression data obtained from the
human lung tissue sample and the expression data from the adenocarcinoma and squamous
cell carcinoma training set(s). In some embodiments, cross-validation is performed,
such as (for example), leave-one-out cross-validation (LOOCV). In some embodiments,
integrative correlation is performed. In some embodiments, a Spearman correlation
is performed. In some embodiments, a centroid based method is employed for the statistical
algorithm as described in
Mullins et al. (2007) Clin Chem. 53(7): 1273-9, and based on gene expression data.
[0047] Results of the gene expression performed on a sample from a subject (test sample)
may be compared to a biological sample(s) or data derived from a biological sample(s)
that is known or suspected to be normal ("reference sample" or "normal sample", e.g.,
non-adenocarcinoma sample). In another embodiment, a reference sample or reference
biomarker level data is obtained or derived from an individual known to have a lung
cancer subtype,
e.g., adenocarcinoma, squamous cell carcinoma, neuroendocrine, small cell carcinoma and/or
carcinoid.
[0048] The reference sample may be assayed at the same time, or at a different time from
the test sample. Alternatively, the biomarker level information from a reference sample
may be stored in a database or other means for access at a later date.
[0049] The biomarker level results of an assay on the test sample may be compared to the
results of the same assay on a reference sample. In some cases, the results of the
assay on the reference sample are from a database, or a reference value(s). In some
cases, the results of the assay on the reference sample are a known or generally accepted
value or range of values by those skilled in the art. In some cases the comparison
is qualitative. In other cases the comparison is quantitative. In some cases, qualitative
or quantitative comparisons may involve but are not limited to one or more of the
following: comparing fluorescence values, spot intensities, absorbance values, chemiluminescent
signals, histograms, critical threshold values, statistical significance values, expression
levels of the genes described herein, mRNA copy numbers.
[0050] In one embodiment, an odds ratio (OR) is calculated for each biomarker level panel
measurement. Here, the OR is a measure of association between the measured biomarker
values for the patient and an outcome,
e.g., lung cancer subtype. For example, see,
J. Can. Acad. Child Adolesc. Psychiatry 2010; 19(3): 227-229.
[0051] In one embodiment, a specified statistical confidence level may be determined in
order to provide a confidence level regarding the lung cancer subtype. For example,
it may be determined that a confidence level of greater than 90% may be a useful predictor
of the lung cancer subtype. In other embodiments, more or less stringent confidence
levels may be chosen. For example, a confidence level of about or at least about 50%,
60%, 70%, 75%, 80%, 85%, 90%, 95%, 97.5%, 99%, 99.5%, or 99.9% may be chosen. The
confidence level provided may in some cases be related to the quality of the sample,
the quality of the data, the quality of the analysis, the specific methods used, and/or
the number of gene expression values (
i.e., the number of genes) analyzed. The specified confidence level for providing the likelihood
of response may be chosen on the basis of the expected number of false positives or
false negatives. Methods for choosing parameters for achieving a specified confidence
level or for identifying markers with diagnostic power include but are not limited
to Receiver Operating Characteristic (ROC) curve analysis, binormal ROC, principal
component analysis, odds ratio analysis, partial least squares analysis, singular
value decomposition, least absolute shrinkage and selection operator analysis, least
angle regression, and the threshold gradient directed regularization method.
[0052] Determining the lung cancer subtype in some cases be improved through the application
of algorithms designed to normalize and or improve the reliability of the biomarker
level data. In some embodiments of the present invention, the data analysis utilizes
a computer or other device, machine or apparatus for application of the various algorithms
described herein due to the large number of individual data points that are processed.
A "machine learning algorithm" refers to a computational-based prediction methodology,
also known to persons skilled in the art as a "classifier," employed for characterizing
a biomarker level profile or profiles,
e.g., to determine the lung cancer subtype. The biomarker levels, determined by,
e.g., microarray-based hybridization assays, sequencing assays, NanoString assays, etc.,
are in one embodiment subjected to the algorithm in order to classify the profile.
Supervised learning generally involves "training" a classifier to recognize the distinctions
among classes (
e.g., adenocarcinoma positive, adenocarcinoma negative, squamous positive, squamous negative,
neuroendocrine positive, neuroendocrine negative, small cell positive, small cell
negative, carcinoid positive, carcinoid negative), and then "testing" the accuracy
of the classifier on an independent test set. For new, unknown samples the classifier
can be used to predict, for example, the class
(e.g., (i) adenocarcinoma vs. squamous cell carcinoma vs. neuroendocrine or (ii) adenocarcinoma
vs. squamous cell carcinoma vs. small cell vs. carcinoid, etc.) in which a particular
sample or samples belongs.
[0053] In some embodiments, a robust multi-array average (RMA) method may be used to normalize
raw data. The RMA method begins by computing background-corrected intensities for
each matched cell on a number of microarrays. In one embodiment, the background corrected
values are restricted to positive values as described by
Irizarry et al. (2003). Biostatistics April 4 (2) 249-64. After background correction, the base-2 logarithm of each background corrected matched-cell
intensity is then obtained. The background corrected, log-transformed, matched intensity
on each microarray is then normalized using the quantile normalization method in which
for each input array and each probe value, the array percentile probe value is replaced
with the average of all array percentile points, this method is more completely described
by
Bolstad et al. Bioinformatics 2003, incorporated by reference in its entirety. Following quantile normalization, the
normalized data may then be fit to a linear model to obtain an intensity measure for
each probe on each microarray. Tukey's median polish algorithm (
Tukey, J. W., Exploratory Data Analysis. 1997) may then be used to determine the log-scale intensity level for the normalized probe
set data.
[0055] In addition, data may be filtered to remove data that may be considered suspect.
In one embodiment, data derived from microarray probes that have fewer than about
4, 5, 6, 7 or 8 guanosine+cytosine nucleotides may be considered to be unreliable
due to their aberrant hybridization propensity or secondary structure issues. Similarly,
data deriving from microarray probes that have more than about 12, 13, 14, 15, 16,
17, 18, 19, 20, 21, or 22 guanosine+cytosine nucleotides may in one embodiment be
considered unreliable due to their aberrant hybridization propensity or secondary
structure issues.
[0056] In some embodiments of the present invention, data from probe-sets may be excluded
from analysis if they are not identified at a detectable level (above background).
[0057] In some embodiments of the present disclosure, probe-sets that exhibit no, or low
variance may be excluded from further analysis. Low-variance probe-sets are excluded
from the analysis via a Chi-Square test. In one embodiment, a probe-set is considered
to be low-variance if its transformed variance is to the left of the 99 percent confidence
interval of the Chi-Squared distribution with (N-1) degrees of freedom. (N-1)
∗Probe-set Variance/(Gene Probe-set Variance). about.Chi-Sq(N-1) where N is the number
of input CEL files, (N-1) is the degrees of freedom for the Chi-Squared distribution,
and the "probe-set variance for the gene" is the average of probe-set variances across
the gene. In some embodiments of the present invention, probe-sets for a given mRNA
or group of mRNAs may be excluded from further analysis if they contain less than
a minimum number of probes that pass through the previously described filter steps
for GC content, reliability, variance and the like. For example in some embodiments,
probe-sets for a given gene or transcript cluster may be excluded from further analysis
if they contain less than about 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15,
or less than about 20 probes.
[0058] Methods of biomarker level data analysis in one embodiment, further include the use
of a feature selection algorithm as provided herein. In some embodiments of the present
invention, feature selection is provided by use of the LIMMA software package (
Smyth, G. K. (2005). Limma: linear models for microarray data. In: Bioinformatics
and Computational Biology Solutions using R and Bioconductor, R. Gentleman, V. Carey,
S. Dudoit, R. Irizarry, W. Huber (eds.), Springer, New York, pages 397-420).
[0059] Methods of biomarker level data analysis, in one embodiment, include the use of a
pre-classifier algorithm. For example, an algorithm may use a specific molecular fingerprint
to pre-classify the samples according to their composition and then apply a correction/normalization
factor. This data/information may then be fed in to a final classification algorithm
which would incorporate that information to aid in the final diagnosis.
[0060] Methods of biomarker level data analysis, in one embodiment, further include the
use of a classifier algorithm as provided herein. In one embodiment of the present
invention, a diagonal linear discriminant analysis, k-nearest neighbor algorithm,
support vector machine (SVM) algorithm, linear support vector machine, random forest
algorithm, or a probabilistic model-based method or a combination thereof is provided
for classification of microarray data. In some embodiments, identified markers that
distinguish samples (
e.g., of varying biomarker level profiles, of varying lung cancer subtypes, and/or varying
molecular subtypes of adenocarcinoma are selected based on statistical significance
of the difference in biomarker levels between classes of interest. In some cases,
the statistical significance is adjusted by applying a Benjamin Hochberg or another
correction for false discovery rate (FDR).
[0061] In some cases, the classifier algorithm may be supplemented with a meta-analysis
approach such as that described by
Fishel and Kaufman et al. 2007 Bioinformatics 23(13): 1599-606. In some cases, the classifier algorithm may be supplemented with a meta-analysis
approach such as a repeatability analysis.
[0062] Methods for deriving and applying posterior probabilities to the analysis of biomarker
level data are known in the art and have been described for example in
Smyth, G. K. 2004 Stat. Appi. Genet. Mol. Biol. 3: Article 3. In some cases, the posterior probabilities may be used in the methods of the present
invention to rank the markers provided by the classifier algorithm.
[0063] A statistical evaluation of the results of the biomarker level profiling may provide
a quantitative value or values indicative of the lung cancer subtype (
e.g., adenocarcinoma, squamous cell carcinoma, neuroendocrine, small cell, carcinoid).
In one embodiment, the data is presented directly to the physician in its most useful
form to guide patient care, or is used to define patient populations in clinical trials
or a patient population for a given medication. The results of the molecular profiling
can be statistically evaluated using a number of methods known to the art including,
but not limited to: the students T test, the two sided T test, Pearson rank sum analysis,
hidden Markov model analysis, analysis of q-q plots, principal component analysis,
one way ANOVA, two way ANOVA, LIMMA and the like.
[0064] In some cases, accuracy may be determined by tracking the subject over time to determine
the accuracy of the original diagnosis. In other cases, accuracy may be established
in a deterministic manner or using statistical methods. For example, receiver operator
characteristic (ROC) analysis may be used to determine the optimal assay parameters
to achieve a specific level of accuracy, specificity, positive predictive value, negative
predictive value, and/or false discovery rate.
[0065] In some cases the results of the biomarker level profiling assays, are entered into
a database for access by representatives or agents of a molecular profiling business,
the individual, a medical provider, or insurance provider. In some cases, assay results
include sample classification, identification, or diagnosis by a representative, agent
or consultant of the business, such as a medical professional. In other cases, a computer
or algorithmic analysis of the data is provided automatically. In some cases the molecular
profiling business may bill the individual, insurance provider, medical provider,
researcher, or government entity for one or more of the following: molecular profiling
assays performed, consulting services, data analysis, reporting of results, or database
access.
[0066] In some embodiments of the present invention, the results of the biomarker level
profiling assays are presented as a report on a computer screen or as a paper record.
In some embodiments, the report may include, but is not limited to, such information
as one or more of the following: the levels of biomarkers (
e.g., as reported by copy number or fluorescence intensity, etc.) as compared to the reference
sample or reference value(s); the lung cancer subtype, proposed therapies.
[0067] In one embodiment, the results of the classifier biomarker profiling may be classified
into one or more of the following: adenocarcinoma positive, adenocarcinoma negative,
squamous cell carcinoma positive, squamous cell carcinoma negative, neuroendocrine
positive, neuroendocrine negative, small cell carcinoma positive, small cell carcinoma
negative, carcinoid positive, carcinoid negative or a combination thereof.
[0068] In some embodiments of the present invention, results are classified using a trained
algorithm. Trained algorithms of the present invention include algorithms that have
been developed using a reference set of known gene expression values and/or normal
samples, for example, samples from individuals diagnosed with a particular molecular
subtype of adenocarcinoma. In some cases a reference set of known gene expression
values are obtained from individuals who have been diagnosed with a particular molecular
subtype of lung cancer.
[0069] Algorithms suitable for categorization of samples include but are not limited to
k-nearest neighbor algorithms, support vector machines, linear discriminant analysis,
diagonal linear discriminant analysis, updown, naive Bayesian algorithms, neural network
algorithms, hidden Markov model algorithms, genetic algorithms, or any combination
thereof.
[0070] When a binary classifier is compared with actual true values (
e.g., values from a biological sample), there are typically four possible outcomes. If
the outcome from a prediction is p (where "p" is a positive classifier output, such
as the presence of a deletion or duplication syndrome) and the actual value is also
p, then it is called a true positive (TP); however if the actual value is n then it
is said to be a false positive (FP). Conversely, a true negative has occurred when
both the prediction outcome and the actual value are n (where "n" is a negative classifier
output, such as no deletion or duplication syndrome), and false negative is when the
prediction outcome is n while the actual value is p. In one embodiment, consider a
test that seeks to determine a molecular subtype of lung cancer. A false positive
in this case occurs when the person tests for a molecular subtype that he or she does
not actually have. A false negative, on the other hand, occurs when the person tests
negative, suggesting the sample is not a particular lung cancer subtype, when the
sample is in fact the lung cancer sample should be characterized as the particular
lung cancer subtype.
[0071] The positive predictive value (PPV), or precision rate, or post-test probability
of disease, is the proportion of subjects diagnosed with the correct lung cancer subtype.
It reflects the probability that a positive test reflects the underlying condition
being tested for. Its value does however depend on the prevalence of the disease,
which may vary. In one example the following characteristics are provided: FP (false
positive); TN (true negative); TP (true positive); FN (false negative). False positive
rate (α)=FP/(FP+TN)-specificity; False negative rate (β)=FN/(TP+FN)-sensitivity; Power=
sensitivity = 1-β; Likelihood-ratio positive=sensitivity/(1-specificity); Likelihood-ratio
negative=( 1 -sensitivity )/specificity. The negative predictive value (NPV) is the
proportion of subjects with negative test results who are correctly diagnosed.
[0072] In some embodiments, the results of the biomarker level analysis of the subject methods
provide a statistical confidence level that a given diagnosis is correct. In some
embodiments, such statistical confidence level is at least about, or more than about
85%, 90%, 91%, 92%, 93%, 94%, 95%, 96%, 97%, 98%, 99% 99.5%, or more.
[0073] In some embodiments, the method further includes classifying the lung tissue sample
as a particular lung cancer subtype based on the comparison of biomarker levels in
the sample and reference biomarker levels, for example present in at least one training
set. In some embodiments, the lung tissue sample is classified as a particular subtype
if the results of the comparison meet one or more criterion such as, for example,
a minimum percent agreement, a value of a statistic calculated based on the percentage
agreement such as (for example) a kappa statistic, a minimum correlation (
e.g., Pearson's correlation) and/or the like.
[0074] It is intended that the methods described herein can be performed by software (stored
in memory and/or executed on hardware), hardware, or a combination thereof. Hardware
modules may include, for example, a general-purpose processor, a field programmable
gate array (FPGA), and/or an application specific integrated circuit (ASIC). Software
modules (executed on hardware) can be expressed in a variety of software languages
(
e.g., computer code), including Unix utilities, C, C++, Java™, Ruby, SQL, SAS®, the R programming
language/software environment, Visual Basic™, and other object-oriented, procedural,
or other programming language and development tools. Examples of computer code include,
but are not limited to, micro-code or micro-instructions, machine instructions, such
as produced by a compiler, code used to produce a web service, and files containing
higher-level instructions that are executed by a computer using an interpreter. Additional
examples of computer code include, but are not limited to, control signals, encrypted
code, and compressed code.
[0075] Some embodiments described herein relate to devices with a non-transitory computer-readable
medium (also can be referred to as a non-transitory processor-readable medium or memory)
having instructions or computer code thereon for performing various computer-implemented
operations and/or methods disclosed herein. The computer-readable medium (or processor-readable
medium) is non-transitory in the sense that it does not include transitory propagating
signals per se (
e.g., a propagating electromagnetic wave carrying information on a transmission medium
such as space or a cable). The media and computer code (also can be referred to as
code) may be those designed and constructed for the specific purpose or purposes.
Examples of non-transitory computer-readable media include, but are not limited to:
magnetic storage media such as hard disks, floppy disks, and magnetic tape; optical
storage media such as Compact Disc/Digital Video Discs (CD/DVDs), Compact Disc-Read
Only Memories (CD-ROMs), and holographic devices; magneto-optical storage media such
as optical disks; carrier wave signal processing modules; and hardware devices that
are specially configured to store and execute program code, such as Application-Specific
Integrated Circuits (ASICs), Programmable Logic Devices (PLDs), Read-Only Memory (ROM)
and Random-Access Memory (RAM) devices. Other embodiments described herein relate
to a computer program product, which can include, for example, the instructions and/or
computer code discussed herein.
[0076] In some embodiments, at least five biomarkers, from about 5 to about 20 biomarkers,
from about 5 to about 50 biomarkers, from about 5 to about 40 biomarkers, or from
about 5 to about 30 biomarkers (
e.g., as disclosed in Table 1A, Table 1B, Table 1C, Table 2, Table 3, Table 4, Table 5
and Table 6) is capable of classifying types and/or subtypes of lung cancer with a
predictive success of at least about 70%, at least about 71%, at least about 72%,
about 73%, about 74%, about 75%, about 76%, about 77%, about 78%, about 79%, about
80%, about 81%, about 82%, about 83%, about 84%, about 85%, about 86%, about 87%,
about 88%, about 89%, about 90%, about 91%, about 92%, about 93%, about 94%, about
95%, about 96%, about 97%, about 98%, about 99%, up to 100%, and all values in between.
In some embodiments, any combination of biomarkers disclosed herein (
e.g., in Table 1A, Table 1B, Table 1C, Table 2, Table 3, Table 4, Table 5 and Table 6 and
sub-combinations thereof) can used to obtain a predictive success of at least about
70%, at least about 71%, at least about 72%, about 73%, about 74%, about 75%, about
76%, about 77%, about 78%, about 79%, about 80%, about 81%, about 82%, about 83%,
about 84%, about 85%, about 86%, about 87%, about 88%, about 89%, about 90%, about
91%, about 92%, about 93%, about 94%, about 95%, about 96%, about 97%, about 98%,
about 99%, up to 100%, and all values in between.
[0077] In some embodiments, at least five biomarkers, from about 5 to about 20 biomarkers,
from about 5 to about 50 biomarkers, from about 5 to about 40 biomarkers, or from
about 5 to about 30 biomarkers (
e.g., as disclosed in Table 1A, Table 1B, Table 1C, Table 2, Table 3, Table 4, Table 5
and Table 6) is capable of classifying lung cancer types and/or subtypes with a sensitivity
or specificity of at least about 70%, at least about 71%, at least about 72%, about
73%, about 74%, about 75%, about 76%, about 77%, about 78%, about 79%, about 80%,
about 81%, about 82%, about 83%, about 84%, about 85%, about 86%, about 87%, about
88%, about 89%, about 90%, about 91%, about 92%, about 93%, about 94%, about 95%,
about 96%, about 97%, about 98%, about 99%, up to 100%, and all values in between.
In some embodiments, any combination of biomarkers disclosed herein can be used to
obtain a sensitivity or specificity of at least about 70%, at least about 71%, at
least about 72%, about 73%, about 74%, about 75%, about 76%, about 77%, about 78%,
about 79%, about 80%, about 81%, about 82%, about 83%, about 84%, about 85%, about
86%, about 87%, about 88%, about 89%, about 90%, about 91%, about 92%, about 93%,
about 94%, about 95%, about 96%, about 97%, about 98%, about 99%, up to 100%, and
all values in between.
[0078] In some embodiments, one or more kits for practicing the methods of the invention
are further provided. The kit can encompass any manufacture (
e.g., a package or a container) including at least one reagent,
e.g., an antibody, a nucleic acid probe or primer, and/or the like, for detecting the biomarker
level of a classifier biomarker. The kit can be promoted, distributed, or sold as
a unit for performing the methods of the present invention. Additionally, the kits
can contain a package insert describing the kit and methods for its use.
[0079] In one embodiment, upon determining a patient's lung cancer subtype, the patient
is selected for suitable therapy, for example chemotherapy or drug therapy with an
angiogenesis inhibitor. In one embodiment, the therapy is angiogenesis inhibitor therapy,
and the angiogenesis inhibitor is a vascular endothelial growth factor (VEGF) inhibitor,
a VEGF receptor inhibitor, a platelet derived growth factor (PDGF) inhibitor or a
PDGF receptor inhibitor.
[0080] In another embodiment, the angiogenesis inhibitor is an integrin antagonist, a selectin
antagonist, an adhesion molecule antagonist (
e.g., antagonist of intercellular adhesion molecule (ICAM)-1, ICAM-2, ICAM-3, platelet
endothelial adhesion molecule (PCAM), vascular cell adhesion molecule (VCAM)), lymphocyte
function-associated antigen 1 (LFA-1)), a basic fibroblast growth factor antagonist,
a vascular endothelial growth factor (VEGF) modulator, or a platelet derived growth
factor (PDGF) modulator (e.g., a PDGF antagonist).
[0081] In one embodiment, as provided above, upon determining a patient's lung cancer subtype,
the patient is selected for suitable therapy, for example chemotherapy or drug therapy
with an angiogenesis inhibitor. In one embodiment, the angiogenesis inhibitor is one
or more of the following: interferon gamma 1β, interferon gamma 1β (Actimmune®) with
pirfenidone, ACUHTR028, αVβ5, aminobenzoate potassium, amyloid P, ANG1122, ANG1170,
ANG3062, ANG3281, ANG3298, ANG4011, anti-CTGF RNAi, Aplidin, astragalus membranaceus
extract with salvia and schisandra chinensis, atherosclerotic plaque blocker, Azol,
AZX100, BB3, connective tissue growth factor antibody, CT140, danazol, Esbriet, EXC001,
EXC002, EXC003, EXC004, EXC005, F647, FG3019, Fibrocorin, Follistatin, FT011, a galectin-3
inhibitor, GKT137831, GMCT01, GMCT02, GRMD01, GRMD02, GRN510, Heberon Alfa R, interferon
α-2β, ITMN520, JKB119, JKB121, JKB122, KRX168, LPA1 receptor antagonist, MGN4220,
MIA2, microRNA 29a oligonucleotide, MMI0100, noscapine, PBI4050, PBI4419, PDGFR inhibitor,
PF-06473871, PGN0052, Pirespa, Pirfenex, pirfenidone, plitidepsin, PRM151, Px102,
PYN17, PYN22 with PYN17, Relivergen, rhPTX2 fusion protein, RXI109, secretin, STX100,
TGF-β Inhibitor, transforming growth factor, β-receptor 2 oligonucleotide,VA999260,
XV615, endostatin, a 20 kDa C-terminal fragment derived from type XVIII collagen,
angiostatin (a 38 kDa fragment of plasmin), or a member of the thrombospondin (TSP)
family of proteins. In a further embodiment, the angiogenesis inhibitor is a TSP-1,
TSP-2, TSP-3, TSP-4 and TSP-5.
[0082] In one embodiment, the therapy is aa soluble VEGF receptor,
e.g., soluble VEGFR-1 and neuropilin 1 (NPR1), angiopoietin-1, angiopoietin-2, vasostatin,
calreticulin, platelet factor-4, a tissue inhibitor of metalloproteinase (TIMP) (
e.g., TIMP1, TIMP2, TIMP3, TIMP4), cartilage-derived angiogenesis inhibitor (
e.g., peptide troponin I and chrondomodulin I), a disintegrin and metalloproteinase with
thrombospondin motif 1, an interferon (IFN) (
e.g., IFN-α, IFN-β, IFN-γ), a chemokine,
e.g., a chemokine having the C-X-C motif (
e.g., CXCL10, also known as interferon gamma-induced protein 10 or small inducible cytokine
B10), an interleukin cytokine (
e.g., IL-4, IL-12, IL-18), prothrombin, antithrombin III fragment, prolactin, the protein
encoded by the
TNFSF15 gene, osteopontin, maspin, canstatin, proliferin-related protein, angiopoietin-1,
angiopoietin-2, angiostatin, endostatin, vasostatin, thrombospondin, calreticulin,
platelet factor-4, TIMP, CDAI, interferon α, interferon β,vascular endothelial growth
factor inhibitor (VEGI) meth-1, meth-2, prolactin, VEGI, SPARC, osteopontin, maspin,
canstatin, proliferin-related protein (PRP), restin, TSP-1, TSP-2, interferon gamma
1β, ACUHTR028, αVβ5, aminobenzoate potassium, amyloid P, ANG1122, ANG1170, ANG3062,
ANG3281, ANG3298, ANG4011, anti-CTGF RNAi, Aplidin, astragalus membranaceus extract
with salvia and schisandra chinensis, atherosclerotic plaque blocker, Azol, AZX100,
BB3, connective tissue growth factor antibody, CT140, danazol, Esbriet, EXC001, EXC002,
EXC003, EXC004, EXC005, F647, FG3019, Fibrocorin, Follistatin, FT011, a galectin-3
inhibitor, GKT137831, GMCT01, GMCT02, GRMD01, GRMD02, GRN510, Heberon Alfa R, interferon
α-2β, ITMN520, JKB119, JKB121, JKB122, KRX168, LPA1 receptor antagonist, MGN4220,
MIA2, microRNA 29a oligonucleotide, MMI0100, noscapine, PBI4050, PBI4419, PDGFR inhibitor,
PF-06473871, PGN0052, Pirespa, Pirfenex, pirfenidone, plitidepsin, PRM151, Px102,
PYN17, PYN22 with PYN17, Relivergen, rhPTX2 fusion protein, RXI109, secretin, STX100,
TGF-β Inhibitor, transforming growth factor, β-receptor 2 oligonucleotide,VA999260,
XV615 or a combination thereof.
[0083] In yet another embodiment, upon determining a patient's lung cancer subtype, the
patient is selected for suitable therapy with pazopanib (Votrient), sunitinib (Sutent),
sorafenib (Nexavar), axitinib (Inlyta), ponatinib (Iclusig), vandetanib (Caprelsa),
cabozantinib (Cometrig), ramucirumab (Cyramza), regorafenib (Stivarga), ziv-aflibercept
(Zaltrap), or a combination thereof. In yet another embodiment, upon determining a
patient's lung cancer subtype, the patient is selected for suitable therapy with a
VEGF inhibitor. In a further embodiment, the VEGF inhibitor is axitinib, cabozantinib,
aflibercept, brivanib, tivozanib, ramucirumab or motesanib. In yet a further embodiment,
the VEGF inhibitor is motesanib.
[0084] In yet another embodiment, upon determining a patient's lung cancer subtype, the
patient is selected for suitable therapy with a platelet derived growth factor (PDGF)
antagonist. For example, the PDGF antagonist, in one embodiment, is an anti-PDGF aptamer,
an anti-PDGF antibody or fragment thereof, an anti-PDGF receptor antibody or fragment
thereof, or a small molecule antagonist. In one embodiment, the PDGF antagonist is
an antagonist of the PDGFR-α or PDGFR-β. In one embodiment, the PDGF antagonist is
the anti-PDGF-β aptamer E10030, sunitinib, axitinib, sorefenib, imatinib, imatinib
mesylate, nintedanib, pazopanib HCl, ponatinib, MK-2461, dovitinib, pazopanib, crenolanib,
PP-121, telatinib, imatinib, KRN 633, CP 673451, TSU-68, Ki8751, amuvatinib, tivozanib,
masitinib, motesanib diphosphate, dovitinib dilactic acid, linifanib (ABT-869).
EXAMPLES
[0085] The present invention is further illustrated by reference to the following Examples.
However, it should be noted that these Examples, like the embodiments described above,
is illustrative and is not to be construed as restricting the scope of the invention
in any way.
Methods
[0086] Several publically available lung cancer gene expression data sets including 2,168
lung cancer samples (TCGA, NCI, UNC, Duke, Expo, Seoul, Tokyo, and France) were assembled
to validate a 57 gene expression Lung Subtype Panel (LSP) developed to complement
morphologic classification of lung tumors. LSP included 52 lung tumor classifying
genes plus 5 housekeeping genes. Data sets with both gene expression data and lung
tumor morphologic classification were selected. Three categories of genomic data were
represented in the data sets: Affymetrix U133+2(n=883) (also referred to as "A-833"),
Agilent 44K(n=334) (also referred to as "A-334"), and Illumina RNAseq(n=951) (also
referred to as "1-951"). Data sources are provided in Table 7 and normalization methods
in Table 8. Samples with a definitive diagnosis of adenocarcinoma, carcinoid, small
cell, and squamous cell carcinoma were used in the analysis.
| Table 7. Data sources for publicly available lung cancer gene expression data |
| Source |
Platform(s) |
N |
Subtype |
Ref |
| TCGA1 |
RNASeq (LUAD) |
528 |
adenocarcinomas |
TCGA-DCC |
| TCGA2 |
RNASeq (LUSC) |
534 |
Squamous |
TCGA-DCC |
| UNC3 |
Agilent_44K |
56 |
56 squamous |
CCR (2010) PMID: 20643781 |
| UNC4 |
Agilent_44K |
116 |
116 adenocarcinomas |
PLoS One (2012) PMID: 22590557 |
| NCI5 |
Agilent_44K |
172 |
56 adenocarcinoma, 92 squamous, 10 large cell |
CCR (2009) |
| Korea 6 |
HG-U133+2 |
138 |
63 adenocarcinoma, 75 squamous |
CCR (2008) PMID: 19010856 |
| Expo7 |
HG-U133+2 |
130 |
all histology subtypes |
GSE2109 |
| French8 |
HG-U133+2 |
307 |
all histology subtypes |
Sci Transl Med (2013) PMID: 23698379 |
| Duke9 |
HG-U133+2 |
118 |
adenocarcinoma and squamous |
Nature (2006) PMID: 16273092 |
| Tokyo10 |
HG-U133+2 |
246 |
adenocarcinomas |
PLoS One (2012) PMID: 22080568, 23028479 |
| 1https://tcga-data.nci.nih.gov/tcgafiles/ftp_auth/distro_ftpusers/anonymous/tumor/luad/cgcc/unc.edu/
illuminahiseq_rnaseqv2/rnaseqv2/?C=S;O=A |
| 2https://tcga-data.nci.nih.gov/tcgafiles/ftp_auth/distro_ftpusers/anonymous/tumor/lusc/cgcc/unc.edu/
illuminahiseq_rnaseqv2/rnaseqv2/ |
| 3 http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE17710 |
| 4http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE26939 |
| 5http://research.agendia.com/ |
| 6http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE8894 |
| 7http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE2109 |
| 8http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE30219 |
| 9http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE3141 |
| 10http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE31210 |
| Table 8. Normalization methods used for the 3 public gene expression datasets |
| Source |
Platforms |
Data Preprocessing / Normalization |
| TCGA |
RNASeq |
RSEM expression estimates are normalized to set the upper quartile count at 1000 for
gene level, 2 based log transformed, data matrix is row (gene) median centered, column
(sample) standardized. |
| UNC+NKI |
Agilent_44K |
2 based log ratio of the two channel intensities are LOWESS normalized, data matrix
is row (gene) median centered, column (sample) standardized. |
| Affy |
HG-U133+2 |
MAS5 normalized one channel intensities are 2 based log transformed, data matrix is
row (gene) median centered, column (sample) standardized. |
[0087] The A-833 dataset was used as training for calculation of adenocarcinoma, carcinoid,
small cell carcinoma, and squamous cell carcinoma gene centroids according to methods
described previously. Gene centroids trained on the A-833 data were then applied to
the normalized TCGA and A-334 datasets to investigate LSP's ability to classify lung
tumors using publicly available gene expression data. For the application of A-833
training centroids to the A-833 dataset, evaluation was performed using Leave One
Out (LOO) cross validation. Spearman correlations were calculated for tumor sample
gene expression results to the A-833 gene expression training centroids. Tumors were
assigned a genomic-defined histologic type (carcinoid, small cell, adenocarcinoma
and squamous cell carcinoma) corresponding to the maximally correlated centroids.
A 2 class, 3 class, and 4 class prediction was explored. Correct predictions were
defined as LSP calls matching the tumor's histologic diagnosis. Percent agreement
was defined as the number of correct predictions divided by the number of all predictions
and an agreement kappa statistic was calculated.
[0088] Ten lung tumor RNA expression datasets were combined into three platform specific
data sets (A-833, A-334, and 1-951). The patient population was diverse and included
smokers and nonsmokers with tumors ranging from Stage 1 - Stage IV. Sample characteristics
and lung cancer diagnoses of the three datasets are included in Table 9.
| Table 9. Sample Characteristics |
| Characteristic |
TCGA RNA seq |
Agilent |
Affymetrix |
| Total # of samples |
1062 |
334 |
875 |
| Tumor Specimen histology |
|
|
|
| Adenocarcinoma |
468 |
174 |
490 |
| Carcinoid |
0 |
0 |
23 |
| Neuroendocrine (NOS) |
0 |
0 |
6 |
| Squamous cell carcinoma |
483 |
148 |
227 |
| Other (excluded from analysis) |
111 |
12 |
105 |
| Gender |
|
|
|
| Female/Male/NA |
285/366/300 |
87/85/150 |
272/491/7 |
| Age at diagnosis |
|
|
|
| Median/(Range) |
67/(38-88) |
66/(37-90) |
63/(13-85) |
| Age not available |
323 |
150 |
7 |
| Stage |
|
|
|
| I |
355 |
NA |
NA |
| II |
146 |
NA |
NA |
| III |
119 |
NA |
NA |
| IV |
26 |
NA |
NA |
| Stage not available |
305 |
322 |
770 |
| Smoking |
|
|
|
| Smoker |
386 |
NA |
NA |
| Non-smoker |
39 |
NA |
NA |
| Smoking status not available |
526 |
322 |
770 |
[0089] Predicted tumor type for a 2 class, 3 class, and 4 class predictor were compared
with tumor morphologic classification and percent agreement and Fleiss' kappa was
calculated for each predictor (Tables 10a, 10b and 10c).
| Table 10a. A-833 dataset training gene centroids applied to 2 other publicly available
lung cancer gene expression databases (TCGA & A-334) for a 2 class prediction of lung
tumor type. LOO cross validation was performed for the A-833 dataset. |
| |
Prediction |
| Histology Diagnosis |
TCGA RNAseq |
Agilent |
Affymetrix LOO |
| |
AD |
SQ |
Sum |
AD |
SQ |
Sum |
AD |
SQ |
Sum |
| Adenocarcinoma (AD) |
452 |
16 |
468 |
151 |
23 |
174 |
423 |
67 |
490 |
| Squamous cell carcinoma (SQ) |
37 |
446 |
483 |
39 |
109 |
148 |
41 |
186 |
227 |
| Sum |
489 |
462 |
951 |
190 |
132 |
322 |
464 |
253 |
717 |
| % Agreement |
94% |
81% |
85% |
| kappa |
0.89 |
0.61 |
0.66 |
| Table 10b. A-833 dataset training gene centroids applied to data from 2 other publicly
available lung cancer gene expression databases (TCGA & A-334) for a 3 class prediction
of lung tumor type. LOO cross validation was performed for the A-833 dataset. |
| |
Prediction |
| Histology Diagnosis |
TCGA RNAseq |
Agilent |
Affymetrix LOO |
| |
AD |
NE |
SQ |
Sum |
AD |
NE |
SQ |
Sum |
AD |
NE |
SQ |
Sum |
| Adenocarcinoma (AD) |
419 |
29 |
29 |
468 |
141 |
6 |
27 |
174 |
399 |
3 |
88 |
490 |
| Neuroendocrine (NE) |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
2 |
49 |
2 |
53 |
| Squamous cell carcinoma (SQ) |
23 |
15 |
445 |
483 |
28 |
3 |
117 |
148 |
25 |
7 |
195 |
227 |
| Sum |
442 |
44 |
465 |
951 |
169 |
9 |
144 |
322 |
426 |
59 |
285 |
770 |
| % Agreement |
91% |
80% |
84% |
| kappa |
0.82 |
0.61 |
0.69 |
| Table 10c. A-833 dataset training gene centroids applied to data from 2 other publicly
available lung cancer gene expression databases (TCGA & A-334) for a 4 class prediction
of lung tumor type. L00 cross validation was performed for the A-833 dataset. |
| |
Prediction |
| Histology Diagnosis |
TCGA RNAseq |
Agilent |
Affymetrix LOO |
| |
AD |
CA |
SC |
SQ |
Sum |
AD |
CA |
SC |
SQ |
Sum |
AD |
CA |
SC |
SQ |
Sum |
| Adenocarcinoma (AD) |
428 |
2 |
20 |
18 |
468 |
138 |
2 |
5 |
29 |
174 |
389 |
1 |
3 |
97 |
490 |
| Carcinoid (CA) |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
1 |
22 |
0 |
0 |
23 |
| Small cell (SC) |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
NA |
27 |
1 |
5 |
194 |
227 |
| Squamous cell carcinoma (SQ) |
23 |
2 |
15 |
443 |
483 |
27 |
0 |
3 |
118 |
148 |
27 |
1 |
5 |
194 |
227 |
| Sum |
451 |
4 |
35 |
461 |
951 |
165 |
2 |
8 |
147 |
322 |
418 |
25 |
28 |
293 |
764 |
| % Agreement |
92% |
80% |
82% |
| kappa |
0.84 |
0.60 |
0.65 |
[0090] Evaluation of inter-observer reproducibility of lung cancer diagnosis based on morphologic
classification alone has previously been published. Overall inter-observer agreement
improved with simplification of the typing scheme. Using the comprehensive 2004 World
Health Organization classification system inter-observer agreement was low (k = 0.25).
Agreement improved with simplification of the diagnosis to the therapeutically relevant
2 type differentiation of squamous/non-squamous (k = 0.55). Agreement of inter-observer
diagnosis is compared to agreement of 2, 3 and 4 class LSP diagnosis in this validation
study (Table 11).
| Table 11. Inter-observer agreement (3) measured using kappa statistic and LSP agreement
with histologic diagnosis in multiple gene expression datasets. |
| |
WHO 2004 Classification |
2 class squamous/ nonsquamous cell carcinoma |
3 class |
4 class |
| Agreement |
Inter-observer agreement |
Inter-observer agreement |
LSP agreement w/ Hist Dx |
LSP agreement w/ Hist Dx |
LSP agreement w/ Hist Dx |
| Kappa |
0.25 |
0.55 |
0.61-0.89 |
0.61-0.82 |
0.60-0.84 |
[0091] Differentiation among various morphologic subtypes of lung cancer is increasingly
important as therapeutic development and patient management become more specifically
targeted to unique features of each tumor. Histologic diagnosis can be challenging
and several studies have demonstrated limited reproducibility of morphologic diagnoses.
The addition of several immunohistochemistry markers, such as p63 and TTF-1 improves
diagnostic precision but many lung cancer biopsies are limited in size and/or cellularity
precluding full characterization using multiple IHC markers. Agreement was markedly
better for all the classifiers (2, 3, and 4 type) in the TCGA RNAseq dataset (% agreement
range 91%-94%) as compared to the other datasets possibly due to the greater accuracy
of the histologic diagnosis and/or the greater precision of the RNA expression results.
Despite several limitations described below, this study demonstrates that LSP, can
be a valuable adjunct to histology in typing lung tumors.
[0092] In multiple datasets with hundreds of lung cancer samples, molecular profiling using
the Lung Subtype Panel (LSP) compared favorably to light microscopic derived diagnoses,
and showed a higher level of agreement than pathologist reassessments. RNA-based tumor
subtyping can provide valuable information in the clinic, especially when tissue is
limiting and the morphologic diagnosis remains unclear.
[0093] Relevant references:
- a. American Cancer Society. Cancer Facts and Figures, 2014.
- b. National Comprehensive Cancer Network (NCCN) Clinical Practice Guideline in Oncology.
Non-Small Cell Lung Cancer. Version 2.2013.
- c. Grilley Olson JE, Hayes DN, Moore DT, et al. Arch Pathol Lab Med 2013; 137: 32-40
- d. Thunnissen E, Boers E, Heideman DA, et al. Virchows Arch 2012; 461:629-38.
- e. Wilkerson MD, Schallheim JM, Hayes DN, et al. J Molec Diagn 2013; 15:485-497.
- f. Li B, Dewey CN. BMC Bioinformatics 2011, 12:323 doi:10.1186/1471-2105-12-323
- g. Yang YH, Dudoit S, Luu P, et al. Nucleic Acids Research 2002, 30:e15.
- h. Hubbell E, Liu, W, Mei R. Bioinformatics (2002) 18 (12): 1585-1592. doi:10.1093/bioinformatics/18.12.1585.
- i. Travis WD, Brambilla E, Muller-Hermelink HK, Harris CC. Pathology and Genetics of
Tumors of the Lung, Pleura, Thymus, and Heart. 3rd ed. Lyon, France: IARC Press; 2004.
World Health Organization Classification of Tumors: vol 10.
- j. Travis WD and Rekhtman N.. Sem Resp and Crit Care Med 2011; 32(1): 22-31.
Example 2 - Lung Cancer Subtyping of Multiple Fresh Frozen and Formalin Fixed Paraffin
Embedded Lung Tumor Gene Expression Datasets
[0094] Multiple datasets comprising 2,177 samples were assembled to evaluate a Lung Subtype
Panel (LSP) gene expression classifier. The datasets included several publically available
lung cancer gene expression data sets, including 2,099 Fresh Frozen lung cancer samples
(TCGA, NCI, UNC, Duke, Expo, Seoul, and France) as well as newly collected gene expression
data from 78 FFPE samples. Data sources are provided in the Table 12 below. The 78
FFPE samples were archived residual lung tumor samples collected at the University
of North Carolina at Chapel Hill (UNC-CH) using an IRB approved protocol. Only samples
with a definitive diagnosis of AD, carcinoid, Small Cell Carcinoma (SCC), or SQC were
used in the analysis. A total of 4 categories of genomic data were available for analysis:
Affymetrix U133+2 (n=693), Agilent 44K (n=344), Illumina® RNAseq (n=1,062) and newly
collected qRT-PCR (n=78) data.
[0095] Archived FFPE lung tumor samples (n=78) were analyzed using a qRT-PCR gene expression
assay as previously described (
Wilkerson et al. J Molec Diagn 2013; 15: :485-497) with the following modifications. RNA was extracted from one 10 µm section of FFPE
tissue using the High Pure RNA Paraffin Kit (Roche Applied Science, Indianapolis,
IN). Extracted RNA was diluted to 5 ng/µL and first strand cDNA was synthesized using
gene specific 3' primers in combination with random hexamers (Superscript III®, Invitrogen®,
Thermo Fisher Scientific Corp, Waltham, MA). An ABI 7900 (Applied Biosystems, Thermo
Fisher Scientific Corp, Waltham, MA) was used for qRT-PCR with continuous SYBR green
fluorescence (530nm) monitoring. ABI 7900 quantitation software generated amplification
curves and associated threshold cycle (Ct) values. Original clinical diagnoses gathered
with the samples is in Table 13.
| Table 13 |
| Sample |
Label |
| VELO001 |
Squamous.Cell.Carcinoma |
| VELO002 |
Squamous.Cell.Carcinoma |
| VELO004 |
Adenocarcinoma |
| VELO006 |
Squamous.Cell.Carcinoma |
| VELO007 |
Squamous.Cell.Carcinoma |
| VELO008 |
Squamous.Cell.Carcinoma |
| VELO010 |
Squamous.Cell.Carcinoma |
| VELO011 |
Squamous.Cell.Carcinoma |
| VELO012 |
Squamous.Cell.Carcinoma |
| VELO013 |
Squamous.Cell.Carcinoma |
| VELO014 |
Squamous.Cell.Carcinoma |
| VELO015 |
Adenocarcinoma |
| VELO016 |
Squamous.Cell.Carcinoma |
| VELO017 |
Squamous.Cell.Carcinoma |
| VELO018 |
Squamous.Cell.Carcinoma |
| VELO019 |
Squamous.Cell.Carcinoma |
| VELO020 |
Adenocarcinoma |
| VELO021 |
Adenocarcinoma |
| VELO022 |
Adenocarcinoma |
| VELO023 |
Adenocarcinoma |
| VELO024 |
Adenocarcinoma |
| VELO025 |
Adenocarcinoma |
| VELO026 |
Adenocarcinoma |
| VELO027 |
Adenocarcinoma |
| VELO028 |
Adenocarcinoma |
| VELO029 |
Adenocarcinoma |
| VELO030 |
Adenocarcinoma |
| VELO031 |
Adenocarcinoma |
| VELO032 |
Adenocarcinoma |
| VELO033 |
Adenocarcinoma |
| VELO034 |
Adenocarcinoma |
| VELO035 |
Adenocarcinoma |
| VELO036 |
Adenocarcinoma |
| VELO037 |
Adenocarcinoma |
| VELO038 |
Squamous.Cell.Carcinoma |
| VELO039 |
Squamous.Cell.Carcinoma |
| VELO040 |
Squamous.Cell.Carcinoma |
| VELO042 |
Squamous.Cell.Carcinoma |
| VELO044 |
Squamous.Cell.Carcinoma |
| VELO046 |
Squamous.Cell.Carcinoma |
| VELO048 |
Squamous.Cell.Carcinoma |
| VELO049 |
Squamous.Cell.Carcinoma |
| VELO050 |
Adenocarcinoma |
| VELO041 |
Squamous.Cell.Carcinoma |
| VELO043 |
Squamous.Cell.Carcinoma |
| VELO045 |
Squamous.Cell.Carcinoma |
| VELO055 |
Neuroendocrine |
| VELO056 |
Neuroendocrine |
| VELO057 |
Neuroendocrine |
| VELO058 |
Neuroendocrine |
| VELO059 |
Neuroendocrine |
| VELO060 |
Neuroendocrine |
| VELO061 |
Neuroendocrine |
| VELO062 |
Neuroendocrine |
| VELO063 |
Neuroendocrine |
| VELO064 |
Neuroendocrine |
| VELO065 |
Neuroendocrine |
| VELO066 |
Neuroendocrine |
| VELO067 |
Neuroendocrine |
| VELO068 |
Neuroendocrine |
| VELO069 |
Neuroendocrine |
| VELO070 |
Neuroendocrine |
| VELO071 |
Neuroendocrine |
| VELO072 |
Neuroendocrine |
| VELO073 |
Neuroendocrine |
| VELO074 |
Neuroendocrine |
| VELO075 |
Neuroendocrine |
| VELO076 |
Neuroendocrine |
| VELO077 |
Neuroendocrine |
| VELO078 |
Neuroendocrine |
| VELO079 |
Neuroendocrine |
| VELO080 |
Neuroendocrine |
| VELO081 |
Neuroendocrine |
| VELO082 |
Neuroendocrine |
| VELO083 |
Neuroendocrine |
| VELO084 |
Neuroendocrine |
| VELO085 |
Neuroendocrine |
[0096] Pathology review was only possible for the FFPE lung tumor cohort in which additional
sections were collected and imaged. Two contiguous sections from each sample were
Hematoxylin & Eosin (H&E) stained and scanned using an Aperio™ ScanScope® slide scanner
(Aperio Technologies, Vista, CA). Virtual slides were viewable at magnifications equivalent
to 32 to 320 objectives (340 magnifier). Pathologist review was blinded to the original
clinical diagnosis and to the gene expression-based subtype classification. Pathology
review-based histological subtype calls were compared to the original diagnosis (n=78).
Agreement of pathology review was defined as those samples for which both slides were
assigned the same subtype as the original diagnosis.
[0097] All statistical analyses were conducted using R 3.0.2 software
(http://cran.R-project.org). Data analyses were conducted separately for FF and for FFPE tumor samples.
[0099] Affymetrix training gene centroids are provided in Table 14. The training set gene
centroids were tested in normalized TCGA RNAseq gene expression and Agilent microarray
gene expression data sets. Due to missing data from the public Agilent dataset, the
Agilent evaluations were performed with a 47 gene classifier, rather than a 52 gene
panel with exclusion of the following genes:
CIB1 FOXH1, LIPE, PCAM1, TUBA1.
| Table 14. |
| Gene |
Adenocarcinoma |
Neuroendocrine |
Squamous.Cell.Carcinoma |
| ABCC5 |
-0.453 |
0.3715 |
1.1245 |
| ACVR1 |
0.0475 |
0.3455 |
-0.0465 |
| ALDH3B1 |
0.4025 |
-0.638 |
-0.401 |
| ANTXR1 |
-0.0705 |
-0.478 |
0.014 |
| BMP7 |
-0.532 |
-0.6265 |
0.6245 |
| CACNB1 |
0.024 |
0.157 |
-0.039 |
| CAPG |
0.109 |
-1.9355 |
-0.0605 |
| CBX1 |
-0.2045 |
0.745 |
0.187 |
| CDH5 |
0.391 |
0.145 |
-0.352 |
| CDKN2C |
-0.0045 |
1.496 |
0.004 |
| CHGA |
-0.143 |
5.7285 |
0.1075 |
| CIB1 |
0.1955 |
-0.261 |
-0.065 |
| CLEC3B |
0.449 |
0.6815 |
-0.3085 |
| CYB5B |
0.058 |
1.487 |
-0.03 |
| DOK1 |
0.233 |
-0.355 |
-0.183 |
| DSC3 |
-0.781 |
-0.8175 |
4.3445 |
| FEN1 |
-0.5025 |
-0.0195 |
0.4035 |
| FOXH1 |
-0.0405 |
0.1315 |
-0.0105 |
| GJB5 |
-1.388 |
-1.5505 |
0.7685 |
| HOXD1 |
0.17 |
-0.462 |
-0.288 |
| HPN |
0.5335 |
0.444 |
-0.736 |
| HYAL2 |
0.1775 |
0.073 |
-0.143 |
| ICA1 |
0.3455 |
1.048 |
-0.233 |
| ICAM5 |
0.13 |
-0.145 |
-0.12 |
| INSM1 |
0.0705 |
7.5695 |
-0.0245 |
| ITGA6 |
-0.709 |
0.029 |
1.074 |
| LGALS3 |
0.1805 |
-1.1435 |
-0.2305 |
| LIPE |
0.0065 |
0.5225 |
-0.0015 |
| LRP10 |
0.2565 |
-0.087 |
-0.16 |
| MAPRE3 |
-0.0245 |
0.6445 |
-0.0025 |
| ME3 |
0.3085 |
0.3415 |
-0.2915 |
| MGRN1 |
0.429 |
0.8075 |
-0.3775 |
| MYBPH |
0.04 |
-0.193 |
-0.054 |
| MYO7A |
0.083 |
-0.287 |
-0.109 |
| NFIL3 |
-0.332 |
-1.0425 |
0.3095 |
| PAICS |
-0.2145 |
0.3915 |
0.2815 |
| PAK1 |
-0.112 |
0.6095 |
0.0965 |
| PCAM1 |
0.232 |
-0.256 |
-0.144 |
| PIK3C2A |
0.1505 |
0.597 |
-0.021 |
| PLEKHA6 |
0.4465 |
2.0785 |
-0.2615 |
| PSMD14 |
-0.251 |
0.5935 |
0.1635 |
| SCD5 |
-0.1615 |
0.06 |
0.13 |
| SFN |
-0.789 |
-3.026 |
0.91 |
| SIAH2 |
-0.5795 |
0.1895 |
0.7175 |
| SNAP91 |
-0.0255 |
3.818 |
0.003 |
| STMN1 |
-0.0995 |
1.2095 |
0.1405 |
| TCF2 |
0.2835 |
-0.5175 |
-0.4665 |
| TCP1 |
-0.1685 |
0.9815 |
0.1985 |
| TFAP2A |
-0.374 |
-0.5075 |
0.3645 |
| TITF1 |
1.482 |
0.1525 |
-1.2755 |
| TRIM29 |
-1.0485 |
-1.318 |
1.379 |
| TUBA1 |
0.155 |
1.71 |
-0.07 |
| Table 15. |
| Gene |
Adenocarcinoma |
Neuroendocrine |
Squamous.Cell.Carcinoma |
| ABCC5 |
-1.105993 |
0.53584995 |
0.28498017 |
| ACVR1 |
-0.1780792 |
0.27746814 |
-0.1331305 |
| ALDH3B1 |
2.21915126 |
-1.0930042 |
0.82709803 |
| ANTXR1 |
0.14704523 |
-0.0027417 |
-0.1000265 |
| CACNB1 |
-0.2032444 |
0.36015235 |
-0.7588385 |
| CAPG |
0.52784999 |
-0.6495988 |
-0.0218352 |
| CBX1 |
-0.5905845 |
-0.0461076 |
-0.2776489 |
| CDH5 |
-0.1546498 |
0.53564677 |
-0.9166437 |
| CDKN2C |
-1.8382992 |
-0.1614815 |
-0.7501799 |
| CHGA |
-6.2702431 |
8.18090411 |
-7.4497926 |
| CIB1 |
0.29948877 |
-0.1804507 |
0.06141265 |
| CLEC3B |
0.1454466 |
0.86221597 |
-0.6686516 |
| CYB5B |
-0.1957799 |
0.13060667 |
-0.2393801 |
| DOK1 |
0.03629227 |
0.03029676 |
-0.2861762 |
| DSC3 |
0.76811006 |
-2.2230482 |
4.45353398 |
| FEN1 |
-0.4100344 |
-0.774919 |
0.19244803 |
| FOXH1 |
1.36365962 |
-1.1539159 |
1.86758359 |
| GJB5 |
2.19942372 |
-3.2908475 |
4.00132739 |
| HOXD1 |
-0.069692 |
-0.3296808 |
0.50430984 |
| HPN |
0.62232864 |
-0.0416111 |
-0.5391064 |
| HYAL2 |
0.47459315 |
-0.2332929 |
-0.0080073 |
| ICA1 |
-0.8108302 |
1.25305275 |
-2.1742476 |
| ICAM5 |
2.12506546 |
-2.2078991 |
2.89691121 |
| INSM1 |
-2.4346556 |
1.92393374 |
-1.9749654 |
| ITGA6 |
-0.7881662 |
0.36443897 |
0.54978058 |
| LGALS3 |
-0.8270046 |
0.79512054 |
-0.9453521 |
| LIPE |
-0.2519692 |
0.29291064 |
-0.2216243 |
| LRP10 |
0.09504093 |
0.14082188 |
-0.4042101 |
| MAPRE3 |
-0.6806204 |
1.2417945 |
-0.5496704 |
| ME3 |
0.17668171 |
0.67674964 |
-1.581183 |
| MGRN1 |
-0.0839601 |
0.35069923 |
-0.6885404 |
| MYBPH |
0.73519429 |
-0.9569161 |
1.14344753 |
| MYO7A |
0.58098661 |
-0.2096425 |
0.0488886 |
| NFIL3 |
0.22274434 |
-0.337858 |
0.66234639 |
| PAICS |
-0.2423309 |
-0.1863934 |
0.39037381 |
| PAK1 |
-0.3803406 |
0.15627507 |
0.0677904 |
| PCAM1 |
0.03655586 |
0.32457357 |
-0.6957339 |
| PIK3C2A |
-0.3868824 |
0.56861416 |
-0.6629455 |
| PLEKHA6 |
-0.4007847 |
1.31002812 |
-1.9802266 |
| PSMD14 |
-0.5115938 |
0.27513479 |
-0.2847234 |
| SCD5 |
-0.4770619 |
-0.4338812 |
0.56043153 |
| SFN |
0.35719248 |
-1.4361124 |
2.34498532 |
| SIAH2 |
-0.4222382 |
-0.3853078 |
0.43237756 |
| SNAP91 |
-5.5499562 |
4.65742276 |
-2.5441741 |
| STMN1 |
-1.4075058 |
0.49776156 |
-1.017481 |
| TCF2 |
1.96819785 |
-0.4121173 |
-0.6555613 |
| TCP1 |
-2.9255287 |
2.322428 |
-2.3059797 |
| TFAP2A |
2.02528144 |
-2.9053184 |
3.62844763 |
| TITF1 |
0.46476685 |
-9.82E-05 |
-1.7079242 |
| TRIM29 |
-1.6554559 |
-0.6463626 |
2.94818107 |
| TUBA1 |
1.77126501 |
-2.0395783 |
1.58902579 |
[0100] Evaluation of the Affymetrix data was performed using Leave One Out (LOO) cross validation.
Spearman correlations were calculated for tumor test sample to the Affymetrix gene
expression training centroids. Tumors were assigned a genomic-defined histologic type
(AD, SQC, or NE) corresponding to the maximally correlated centroids. Correct predictions
were defined as LSP calls matching the tumor's original histologic diagnosis. Percent
agreement was defined as the number of correct predictions divided by the number of
total predictions and an agreement kappa statistic was calculated.
[0101] qRT-PCR from FFPE sample analysis: Previously published training centroids (
Wilkerson et al. J Molec Diagn 2013; 15:485-497), calculated from qRT-PCR data of FFPE lung tumor samples, were cross-validated in
this new sample set of qRT-PCR gene expression from FFPE lung tumor tissue. Wilkerson
et al. AD and SQC centroids were used as published (
Wilkerson et al. J Molec Diagn 2013; 15:485-497). Neuroendocrine gene centroids were calculated similarly using published gene expression
data (n=130) (
Wilkerson et al. J Molec Diagn 2013; 15 :485-497). The Wilkerson et al. gene centroids (
Wilkerson et al. J Molec Diagn 2013; 15:4852-497) for the FFPE tissue evaluation are included in Table 15. FFPE sample gene expression
data was scaled to align gene variance with Wilkerson et al. data. A gene-specific
scaling factor was calculated that took into account label frequency differences between
the data sets. Gene expression data was then median centered, sign flipped (high Ct
= low abundance), and scaled using the gene specific scaling factor. Subtype was predicted
by correlating each sample with the 3 subtype centroids and assignment of the subtype
with the highest correlation centroid (Spearman correlation).
[0102] Ten lung tumor gene expression datasets including nine FF plus one new FFPE qRT-PCR
gene expression dataset were combined into four platform-specific data sets (Affymetrix,
Agilent, Illumina RNAseq, and qRT-PCR). For the datasets where clinical information
was available, the patient population was diverse and included smokers and nonsmokers
with tumors ranging from Stage 1 - Stage IV. Sample characteristics and lung cancer
diagnoses of the datasets used in this study are included in Table 16. After exclusion
of samples without a definitive diagnosis of AD, SQC, SCC, or carcinoid, and exclusion
of 1 FFPE sample that failed qRT-PCR analysis, the following samples were available
for further data analysis: Affymetrix (n=538), Agilent (n=322), Illumina RNAseq (n=951)
and qRT-PCR (n=77).
| Table 16 |
| Characteristic |
TCGA RNA seq |
Agilent |
Affymetrix |
UNC FFPE |
| Total # of samples |
1062 |
344 |
693 |
78 |
| Tissue Preservation |
Fresh |
Fresh |
Fresh |
|
| Frozen |
Frozen |
Frozen |
FFPE |
| Tumor specimen histology |
|
|
|
|
| Adenocarcinoma |
468 |
174 |
264 |
21 |
| Carcinoid |
0 |
0 |
23 |
15 |
| Small Cell Carcinoma |
0 |
0 |
24 |
16 |
| Squamous Cell Carcinoma |
483 |
148 |
227 |
25 |
| Other(excluded from analysis) |
111 |
22 |
155 |
01 |
| Gender |
|
|
|
|
| Female/Male/NA |
285/366/300 |
87/85/150 |
151/386/1 |
NA |
| Age at Diagnosis |
|
|
|
|
| Median/(Range) |
67/(38-88) |
66/(37-90) |
65/(13-85) |
NA |
| Age not available |
323 |
0 |
2 |
NA |
| Stage |
|
|
|
|
| I |
355 |
NA |
NA |
NA |
| II |
146 |
NA |
NA |
NA |
| III |
119 |
NA |
NA |
NA |
| IV |
26 |
NA |
NA |
NA |
| Stage not available |
305 |
322 |
538 |
77 |
| Smoking |
|
|
|
|
| Smoker |
386 |
NA |
NA |
NA |
| Nonsmoker |
39 |
NA |
NA |
NA |
| Smoking status not available |
526 |
322 |
538 |
77 |
[0103] As a means of de novo evaluation of the new FFPE data set, we performed hierarchical
clustering of LSP gene expression from the FFPE archived samples (n=77); as expected,
this analysis demonstrated three clusters/subtypes corresponding to AD, SQC, and NE
(Figure 2). The predetermined LSP 3-subtype centroid predictor was then applied to
all 4 datasets, and results were compared with tumor morphologic classifications.
Percent agreement and Fleiss' kappa were calculated for each dataset (Table 17). The
percent agreement ranged from 78% - 91% and kappa's from 0.57 - 0.85.
[0104] As another means of assessing independent pathology agreement, the agreement of blinded
pathology review of the 77 FFPE lung tumors with the original morphologic diagnosis
was found to be 82% (63/77). In 12/77 cases, blinded duplicate slides provided conflicting
results and in 10/77 cases, at least one of the duplicates had a non-definitive pathological
subtype classification of "Adenosquamous", "Large Cell", or "High grade poorly differentiated
carcinoma". Comparison of the original morphologic diagnosis, blinded pathology review,
and gene expression LSP subtype call for each of the 77 samples is shown in Figure
3. Details of discordant sample overlap (
i.e., 6 samples where tumor subtype disagreed with original morphology diagnosis by both
path review and gene expression LSP call) are provided in Table 18. Overall, these
concordance values of LSP relative to the original pathology calls were at least as
great as the concordance between any two pathologists (
Grilley et al. Arch Pathol Lab Med 2013; 137: 32-40;
Thunnissen et al. Virchows Arch 2012; 461(6):629-38. Doi: 10.1007/s00428-012-1234-x. Epub 2012 Oct 12;
Thunnissen et al. Mod Pathol 2012; 25(12):1574-83. Doi: 10.1038/modpathol.2012. 106) thus suggesting that the assay described herein performs at least as well as a trained
pathologist.
[0105] In this study, LSP provided reliable subtype classifications, validating its performance
across multiple gene expression platforms, and even when using FFPE specimens. Hierarchical
clustering of the newly assayed FFPE samples demonstrated good separation of the 3
subtypes (AC, SQC, and NE) based on the levels of 52 classifier biomarkers. Concordance
with morphology diagnosis when using the LSP centroids was greatest in the TCGA RNAseq
dataset (agreement = 91%), possibly due to the very extensive pathology review and
accuracy of the histologic diagnosis associated with TCGA samples as compared to other
datasets. Agreement was lowest (78%) in the Agilent dataset, which may have been affected
by the reduced number of genes that were available for that analysis. Overall, the
LSP assay displayed a higher concordance with the original morphology diagnosis than
the pathology review in all datasets except in the Agilent dataset, in which only
47 genes, rather than 52, were present for the analysis.
[0106] In the FFPE samples where blinded pathology re-review was possible, results suggested
that pathology calls were not always consistent with the original diagnosis, nor were
they necessarily consistent in the duplicate slides provided from each sample. For
a subset of samples (n=6), both the pathology re-review and the LSP gene expression
analysis suggested the same alternate diagnosis, leading one to question the accuracy
of the original morphologic diagnosis, which was our "gold standard".
[0107] In this study, there were a low number of NE tumor samples in the Affymetrix dataset,
and an absence of NE samples in both the Agilent and TCGA datasets. This was partially
overcome by a relatively high number of NE samples in the FFPE sample set (31/77),
thus providing a good test of the LSP signature's ability to identify NE samples.
Another limitation of the study relates to the blinded pathology re-review. The blinded
pathology review was based on two imaged sections and did not reflect usual histology
standard practice where multiple sections/blocks and potentially IHC stains would
have been available to make a diagnosis.
SEQUENCE LISTING
[0108]
<110> Faruki, Hawazin
Lai-Goldman, Myla
Miglarese, Mark R.
Perou, Charles
Hayes, David Neil
Mayhew, Greg
Fan, Chris
<120> METHODS FOR TYPING OF LUNG CANCER
<130> GNCN-004/01WO
<160> 114
<170> PatentIn version 3.5
<210> 1
<211> 22
<212> DNA
<213> Homo sapiens
<400> 1
aagagagatt ggatttggaa cc 22
<210> 2
<211> 22
<212> DNA
<213> Homo sapiens
<400> 2
ccagaagccc aagaagattg ta 22
<210> 3
<211> 19
<212> DNA
<213> Homo sapiens
<400> 3
aatcctggtg tcaaggaag 19
<210> 4
<211> 19
<212> DNA
<213> Homo sapiens
<400> 4
ggaccgattt taccgatcc 19
<210> 5
<211> 21
<212> DNA
<213> Homo sapiens
<400> 5
acagtccaga tagtcgtatg t 21
<210> 6
<211> 17
<212> DNA
<213> Homo sapiens
<400> 6
gtctccgcca tccctat 17
<210> 7
<211> 19
<212> DNA
<213> Homo sapiens
<400> 7
actggtgtaa caggaacat 19
<210> 8
<211> 17
<212> DNA
<213> Homo sapiens
<400> 8
tttggaagga ctgcgct 17
<210> 9
<211> 17
<212> DNA
<213> Homo sapiens
<400> 9
cacgtcatct cccgttc 17
<210> 10
<211> 18
<212> DNA
<213> Homo sapiens
<400> 10
attgaacttc ccacacga 18
<210> 11
<211> 18
<212> DNA
<213> Homo sapiens
<400> 11
ggaacagact gtcaccat 18
<210> 12
<211> 19
<212> DNA
<213> Homo sapiens
<400> 12
tcagagtgtg tggtcaggc 19
<210> 13
<211> 17
<212> DNA
<213> Homo sapiens
<400> 13
gggacagctt caacact 17
<210> 14
<211> 18
<212> DNA
<213> Homo sapiens
<400> 14
cctgtgaaca gccctatg 18
<210> 15
<211> 17
<212> DNA
<213> Homo sapiens
<400> 15
ttctgggcac ggtgaag 17
<210> 16
<211> 21
<212> DNA
<213> Homo sapiens
<400> 16
ggccaaacta gagcacgaat a 21
<210> 17
<211> 19
<212> DNA
<213> Homo sapiens
<400> 17
tcagcaagaa ggagatgcc 19
<210> 18
<211> 21
<212> DNA
<213> Homo sapiens
<400> 18
gtgctccctc tccattaagt a 21
<210> 19
<211> 20
<212> DNA
<213> Homo sapiens
<400> 19
caagttcagg agaactcgac 20
<210> 20
<211> 19
<212> DNA
<213> Homo sapiens
<400> 20
ggctgtggtt atgcgatag 19
<210> 21
<211> 18
<212> DNA
<213> Homo sapiens
<400> 21
acccgaggaa caacctta 18
<210> 22
<211> 18
<212> DNA
<213> Homo sapiens
<400> 22
ccctctccat tccctaca 18
<210> 23
<211> 17
<212> DNA
<213> Homo sapiens
<400> 23
cagagcgcca ggcatta 17
<210> 24
<211> 18
<212> DNA
<213> Homo sapiens
<400> 24
ccactggctg aggtgtta 18
<210> 25
<211> 17
<212> DNA
<213> Homo sapiens
<400> 25
tgggcgagtc tacgatg 17
<210> 26
<211> 18
<212> DNA
<213> Homo sapiens
<400> 26
ctttctgccc tggagatg 18
<210> 27
<211> 19
<212> DNA
<213> Homo sapiens
<400> 27
gcgccatttg ctagagata 19
<210> 28
<211> 19
<212> DNA
<213> Homo sapiens
<400> 28
agagaagatg ggcagaaag 19
<210> 29
<211> 17
<212> DNA
<213> Homo sapiens
<400> 29
gcccagatca tccgtca 17
<210> 30
<211> 17
<212> DNA
<213> Homo sapiens
<400> 30
accacaagga cttcgac 17
<210> 31
<211> 17
<212> DNA
<213> Homo sapiens
<400> 31
gctccgctgc tatcttt 17
<210> 32
<211> 17
<212> DNA
<213> Homo sapiens
<400> 32
agcggccagg tggatta 17
<210> 33
<211> 18
<212> DNA
<213> Homo sapiens
<400> 33
atgggctttg ggagcata 18
<210> 34
<211> 18
<212> DNA
<213> Homo sapiens
<400> 34
gacctggatg ccaagcta 18
<210> 35
<211> 17
<212> DNA
<213> Homo sapiens
<400> 35
ccggctcttg gaagttg 17
<210> 36
<211> 20
<212> DNA
<213> Homo sapiens
<400> 36
acgcggatcg agtttgataa 20
<210> 37
<211> 17
<212> DNA
<213> Homo sapiens
<400> 37
cgcaagtccc agaagat 17
<210> 38
<211> 17
<212> DNA
<213> Homo sapiens
<400> 38
cgcggatacg atgtcac 17
<210> 39
<211> 17
<212> DNA
<213> Homo sapiens
<400> 39
gaactcggcc tatcgct 17
<210> 40
<211> 20
<212> DNA
<213> Homo sapiens
<400> 40
tctgacctca tcatcggcaa 20
<210> 41
<211> 20
<212> DNA
<213> Homo sapiens
<400> 41
gaggtgaagc aaactacgga 20
<210> 42
<211> 17
<212> DNA
<213> Homo sapiens
<400> 42
actctccaca aagctcg 17
<210> 43
<211> 22
<212> DNA
<213> Homo sapiens
<400> 43
ggatttcagc taccagttac tt 22
<210> 44
<211> 17
<212> DNA
<213> Homo sapiens
<400> 44
ttcgtcctgg tggatcg 17
<210> 45
<211> 22
<212> DNA
<213> Homo sapiens
<400> 45
agtgattgat gtgtttgcta tg 22
<210> 46
<211> 20
<212> DNA
<213> Homo sapiens
<400> 46
caaagccaag ccactcactc 20
<210> 47
<211> 17
<212> DNA
<213> Homo sapiens
<400> 47
ctcggcagtc ctgtttc 17
<210> 48
<211> 18
<212> DNA
<213> Homo sapiens
<400> 48
acacctggta cgtcagaa 18
<210> 49
<211> 20
<212> DNA
<213> Homo sapiens
<400> 49
atgcccaaga gaatcgtaaa 20
<210> 50
<211> 19
<212> DNA
<213> Homo sapiens
<400> 50
atgagtccaa agcacacga 19
<210> 51
<211> 22
<212> DNA
<213> Homo sapiens
<400> 51
tgagattgag gatgaagctg ag 22
<210> 52
<211> 17
<212> DNA
<213> Homo sapiens
<400> 52
ccgactcaac gtgagac 17
<210> 53
<211> 17
<212> DNA
<213> Homo sapiens
<400> 53
gtgccctctc cttttcg 17
<210> 54
<211> 18
<212> DNA
<213> Homo sapiens
<400> 54
cgttcttttt cgcaacgg 18
<210> 55
<211> 17
<212> DNA
<213> Homo sapiens
<400> 55
ggtgtgccac tgaagat 17
<210> 56
<211> 17
<212> DNA
<213> Homo sapiens
<400> 56
gtgtcgtggt ggtcatt 17
<210> 57
<211> 17
<212> DNA
<213> Homo sapiens
<400> 57
gcatgaagac agtggct 17
<210> 58
<211> 17
<212> DNA
<213> Homo sapiens
<400> 58
ttcttgcgac tcacgct 17
<210> 59
<211> 24
<212> DNA
<213> Homo sapiens
<400> 59
gctcctcaaa catctttgtg ttca 24
<210> 60
<211> 20
<212> DNA
<213> Homo sapiens
<400> 60
gaccactgtg ggtcattatt 20
<210> 61
<211> 17
<212> DNA
<213> Homo sapiens
<400> 61
gaaatctctg gccgctc 17
<210> 62
<211> 21
<212> DNA
<213> Homo sapiens
<400> 62
actgggcatc ataagaaatc c 21
<210> 63
<211> 19
<212> DNA
<213> Homo sapiens
<400> 63
actgaacaga agacttcgt 19
<210> 64
<211> 20
<212> DNA
<213> Homo sapiens
<400> 64
aacctccaag tggaaattct 20
<210> 65
<211> 22
<212> DNA
<213> Homo sapiens
<400> 65
tcggtctttc aaatcgggat ta 22
<210> 66
<211> 18
<212> DNA
<213> Homo sapiens
<400> 66
ctgctgtcac aggacaat 18
<210> 67
<211> 19
<212> DNA
<213> Homo sapiens
<400> 67
aaggtaaagc cagactcca 19
<210> 68
<211> 17
<212> DNA
<213> Homo sapiens
<400> 68
gggagcgtag ggttaag 17
<210> 69
<211> 22
<212> DNA
<213> Homo sapiens
<400> 69
cagtgtattc tgcacaatca ac 22
<210> 70
<211> 21
<212> DNA
<213> Homo sapiens
<400> 70
gttccaggat gttggacttt c 21
<210> 71
<211> 18
<212> DNA
<213> Homo sapiens
<400> 71
ggaaagtgtg tcggagat 18
<210> 72
<211> 18
<212> DNA
<213> Homo sapiens
<400> 72
aggcaacatc attccctc 18
<210> 73
<211> 22
<212> DNA
<213> Homo sapiens
<400> 73
gtcaacaccc atcttcttga aa 22
<210> 74
<211> 18
<212> DNA
<213> Homo sapiens
<400> 74
cgtagtggaa gacggaaa 18
<210> 75
<211> 23
<212> DNA
<213> Homo sapiens
<400> 75
ctggtgtaga attaggagac gta 23
<210> 76
<211> 17
<212> DNA
<213> Homo sapiens
<400> 76
ggcatcaaga gagaggc 17
<210> 77
<211> 24
<212> DNA
<213> Homo sapiens
<400> 77
gataaagagt tacaagctcc tctg 24
<210> 78
<211> 17
<212> DNA
<213> Homo sapiens
<400> 78
tctaggcctt gacggat 17
<210> 79
<211> 19
<212> DNA
<213> Homo sapiens
<400> 79
tttgggcaaa cctcggtaa 19
<210> 80
<211> 17
<212> DNA
<213> Homo sapiens
<400> 80
gcacagcaaa tgccact 17
<210> 81
<211> 23
<212> DNA
<213> Homo sapiens
<400> 81
cttgtctttc cctactgtct tac 23
<210> 82
<211> 18
<212> DNA
<213> Homo sapiens
<400> 82
cttgttccag cagaacct 18
<210> 83
<211> 18
<212> DNA
<213> Homo sapiens
<400> 83
cagtcctctg caccgtta 18
<210> 84
<211> 18
<212> DNA
<213> Homo sapiens
<400> 84
catccagatc cctcacat 18
<210> 85
<211> 19
<212> DNA
<213> Homo sapiens
<400> 85
ccaagacaca gccagtaat 19
<210> 86
<211> 18
<212> DNA
<213> Homo sapiens
<400> 86
tttccagccc tcgtagtc 18
<210> 87
<211> 17
<212> DNA
<213> Homo sapiens
<400> 87
gggacacagg gaagaac 17
<210> 88
<211> 17
<212> DNA
<213> Homo sapiens
<400> 88
gtctgccact ctgcaac 17
<210> 89
<211> 17
<212> DNA
<213> Homo sapiens
<400> 89
gtcggctgac gctttga 17
<210> 90
<211> 23
<212> DNA
<213> Homo sapiens
<400> 90
gaacaagtca gtctagggaa tac 23
<210> 91
<211> 21
<212> DNA
<213> Homo sapiens
<400> 91
tgctttcgat aagtccagac a 21
<210> 92
<211> 18
<212> DNA
<213> Homo sapiens
<400> 92
cctctgaggc tggaaaca 18
<210> 93
<211> 19
<212> DNA
<213> Homo sapiens
<400> 93
atccactgat cttccttgc 19
<210> 94
<211> 19
<212> DNA
<213> Homo sapiens
<400> 94
cagtgctgct tcagacaca 19
<210> 95
<211> 21
<212> DNA
<213> Homo sapiens
<400> 95
cctttcttca agggtaaagg c 21
<210> 96
<211> 20
<212> DNA
<213> Homo sapiens
<400> 96
tcgaatttct ctcctcccat 20
<210> 97
<211> 18
<212> DNA
<213> Homo sapiens
<400> 97
ctgagtccac acaggttt 18
<210> 98
<211> 23
<212> DNA
<213> Homo sapiens
<400> 98
cccatacttg ttgatggcaa tta 23
<210> 99
<211> 18
<212> DNA
<213> Homo sapiens
<400> 99
tcctgcgtgt gttctact 18
<210> 100
<211> 19
<212> DNA
<213> Homo sapiens
<400> 100
agtcatcatg tacccagca 19
<210> 101
<211> 20
<212> DNA
<213> Homo sapiens
<400> 101
cccaggatac tctcttcctt 20
<210> 102
<211> 18
<212> DNA
<213> Homo sapiens
<400> 102
cactggatca actgcctc 18
<210> 103
<211> 19
<212> DNA
<213> Homo sapiens
<400> 103
cagctgtcac acccagagc 19
<210> 104
<211> 17
<212> DNA
<213> Homo sapiens
<400> 104
cgtatggtgc agggtca 17
<210> 105
<211> 20
<212> DNA
<213> Homo sapiens
<400> 105
tctggactgt ctggttgaat 20
<210> 106
<211> 19
<212> DNA
<213> Homo sapiens
<400> 106
cctgtacacc aagcttcat 19
<210> 107
<211> 19
<212> DNA
<213> Homo sapiens
<400> 107
ccatgcccac tttcttgta 19
<210> 108
<211> 20
<212> DNA
<213> Homo sapiens
<400> 108
cattggtggt gaagctcttg 20
<210> 109
<211> 18
<212> DNA
<213> Homo sapiens
<400> 109
cgtggactga gatgcatt 18
<210> 110
<211> 21
<212> DNA
<213> Homo sapiens
<400> 110
ttcatgtcgt tgaacacctt g 21
<210> 111
<211> 21
<212> DNA
<213> Homo sapiens
<400> 111
cattttggct tttaggggta g 21
<210> 112
<211> 17
<212> DNA
<213> Homo sapiens
<400> 112
ggcagaagcg agacttt 17
<210> 113
<211> 17
<212> DNA
<213> Homo sapiens
<400> 113
gcacatagga ggtggca 17
<210> 114
<211> 17
<212> DNA
<213> Homo sapiens
<400> 114
gcggacttta ccgtgac 17